US20100280365A1 - Guidance method based on 3d-2d pose estimation and 3d-ct registration with application to live bronchoscopy - Google Patents

Guidance method based on 3d-2d pose estimation and 3d-ct registration with application to live bronchoscopy Download PDF

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US20100280365A1
US20100280365A1 US12/834,076 US83407610A US2010280365A1 US 20100280365 A1 US20100280365 A1 US 20100280365A1 US 83407610 A US83407610 A US 83407610A US 2010280365 A1 US2010280365 A1 US 2010280365A1
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William E. Higgins
Scott A. Merritt
Lav Rai
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Definitions

  • the physician needs to perform a biopsy of the suspect cancer sites, such as the peripheral nodules or mediastinal lymph nodes. Such sites are first identified by analyzing the 3D CT image data of the chest. Later, during bronchoscopy, the physician attempts to reach these sites with the help of the live video obtained from a bronchoscope.
  • the success of a standard bronchoscopy depends heavily on the skill level and experience of the physician. The success of the bronchoscopy could be increased if the physician received some form of guidance during the procedure.
  • the method proposed by Bricault et al. does not involve tracking and is limited to the bifurcation images [1].
  • the method of Mori et al. computes the essential matrix for tracking [3] and Powell's method for registration.
  • the approach has three limitations. Firstly, the use of Powell's method makes the registration step slow. Secondly, the essential matrix cannot be determined if a subset of points are coplanar [7]. Thirdly, a translation can only be recovered up to a scale from the estimated essential matrix [7].
  • the optical-flow approach taken by Buchty et al. for tracking is slow since it involves iterative warping and computation of gradients for the images [2, 6]. Use of simplex method makes the registration step slow as well.
  • This invention broadly resides in a system and method for providing guidance in conjunction with a diagnostic procedure.
  • the method includes the steps of providing previously acquired image data of a body lumen, acquiring live image data of the body lumen, and registering the previously acquired image data and the live image data in real time or near real-time.
  • the registration is used to guide an instrument such as an endoscope, bronchoscope, colonoscope or laparoscope.
  • the previously acquired image data may be derived from virtual image data, including computerized tomographic (CT) slices.
  • CT computerized tomographic
  • the previously acquired image data may be derived from a prerecorded video image.
  • the live image data may be derived from video data acquired during the diagnostic procedure or from a stream of incoming virtual images.
  • the invention has particular applicability to guidance during a live bronchoscopy.
  • the 3D motion of the bronchoscope is estimated using a fast coarse tracking step followed by a fine registration step as necessary for correction purposes.
  • the tracking is based on finding a set of corresponding feature points across a plurality of consecutive bronchoscopic video frames, then estimating for the new pose of the bronchoscope.
  • the pose estimation is based on linearization of the rotation matrix.
  • the fine registration step is a gradient-based Gauss-Newton method that maximizes the correlation-based cost between the bronchoscopic video image and the CT-based virtual image.
  • the continuous guidance is provided by estimating the 3D motion of the bronchoscope in a loop.
  • a 3D-2D pose estimation problem is more constrained than a 2D-2D pose estimation problem and does not suffer from the limitations associated with computing an essential matrix.
  • correlation-based cost instead of mutual information as a registration cost, makes it simpler to use gradient-based methods for registration.
  • FIG. 1 shows a set of 5 consecutive bronchoscopic video (real) frames displaying motion of the bronchoscope inside the airway tree;
  • FIG. 2 shows the CT-based (virtual) endoluminal rendering of the airway surface based on the current estimate of the position and the orientation (pose) of the bronchoscope;
  • FIG. 3 shows the overall method of the invention
  • FIG. 4A-4C demonstrate the manual registration step applied to a pair of virtual images, wherein FIG. 4A shows the initial unregistered pair of virtual images, FIG. 4B shows the 6-point correspondence given manually, and FIG. 4C shows the registered pair after the pose estimation step;
  • FIG. 5 illustrates the use of the manual registration step for the initial registration of the virtual and real image to start the guidance method
  • FIGS. 6A-6C show the result of using the method by Lu et al. for pose estimation, wherein FIG. 6A shows the virtual image I V close to the real image I Rc on right with the matching points, FIG. 6B shows the real image I Rc close to the virtual image I V on left with the latching points, and FIG. 6C shows the re-rendered virtual image I V after the pose estimation step;
  • FIGS. 7A and 7B show the computed corresponding matching point on the real image I R5 , given an input point on the virtual image I V ;
  • FIGS. 8A and 8B show the results obtained by applying a registration step to a virtual image and a real image
  • FIGS. 9A-9C illustrate the optical-flow-based method for registration by Helferty et al.
  • the fine registration step takes more time. Accordingly, most of the motion should be estimated by a fast tracking method and the fine registration should only be done for correction.
  • For tracking we use correspondence of points between the real video frames along with the depth-map information from the virtual rendering to solve a 3D-2D pose estimation problem. Since the accumulated rotation is small over a small number of consecutive real frames, linearization of the rotation matrix can be done. Thus, the 3D-2D pose estimation problem reduces to solving a linear system of equations.
  • the same method can be used for manual registration if the manual correspondence between the real and virtual image is given.
  • the fine registration step we use the approach used for tracking by Konty et al. [6]. This can be done by replacing the optical-flow constraint equation by a similar constraint based on correlation and replacing the source image with the virtual image.
  • FIG. 1 shows a set of 5 consecutive bronchoscopic video (real) frames displaying motion of the bronchoscope inside the airway tree.
  • the first frame is considered as the current video frame I Rc and the last frame is considered as I R5 .
  • the frames in between are denoted by I R2 , I R3 and I R4 .
  • FIG. 2 shows the CT-based (virtual) endoluminal rendering of the airway surface based on the current estimate of the position and the orientation (pose) of the bronchoscope.
  • the virtual image I V is visually similar to the current video frame I Rc .
  • the goal is to re-render the virtual image I V so that it looks like I R5 , the real frame which is five frames apart from the current video frame I Rc . This can be done by making use of the image motion observed in the real frames, the depth-map from the virtual rendering, and the visual similarity between the virtual image and real images.
  • FIG. 3 shows the overall method.
  • the first step is to do an initial registration of the virtual image I V with the current real image I Rc , either manually or automatically.
  • the manual registration is done by giving corresponding points across the real and virtual image. In the preferred embodiment 6 points are used. Since the points in the virtual image also have the depth data associated with them denoted by W i or (X i ,Y i ,Z i ), the 3D-2D pose estimation method is applied to get the current pose or the 3D motion of the bronchoscope (R,T), which will make virtual image I V look the same as the current real image I Rc . I V is re-rendered using the pose estimate. Automatic registration is done by the fine registration step.
  • the second step is to choose a multiplicity of points from the current real frame I Rc to be tracked over a plurality of consecutive frames.
  • 20 points are tracked across 5 frames. Since I V is registered with I Rc , we know the depths W i associated with each point from the current depth-map.
  • the third step is to track these 20 points using pairwise correspondence over the next 5 frames to get their new 2D locations (u i ,v i ).
  • the fourth step is to estimate the new pose (R,T) using the 2D motion of tracked points and their initial depths W i .
  • the virtual image I V is re-rendered using the new pose (R,T).
  • the sixth step is to do fine registration between I V and I R5 to take care of the drift errors due to tracking and then re-render I V .
  • I R5 is assigned as the new current real frame I Rc and the algorithm goes from the second to the sixth step in a loop for continuous guidance.
  • I Rc For fast coarse tracking of the bronchoscope, 20 feature points p i are selected on image I Rc .
  • I V is the matching virtual image for I Rc and hence provides the depth-map information for each p i . Every p i has an associated depth given by the depth-map and its 3D location is given by W i or (X i ,Y i ,Z i ).
  • Each feature point pi is tracked over frames I R2 , I R3 , I R4 , and I R5 to get their new image location (u i , v i ) in I RS .
  • the selection criterion for a feature point is entirely dependent on the method used for tracking it. It is for this reason that we explain the tracking method before the selection method.
  • w is a Gaussian window function applied to get better centering or localization of a matched point
  • (u x ,v y ) is varied over a search window S and (p,q) is varied over a patch P.
  • the match of point (x,y) in I Ri is given by (x+u x ⁇ ,y+v y ⁇ ) in I Ri+1 .
  • the larger motion is estimated at a coarser level. This reduces the computation, since a smaller window P can be used for a template intensity patch and the search space S remains small at all the levels in the pyramid.
  • feature points p i are chosen from frame I Rc .
  • a feature-based approach tries to use a small amount of image data to save computation and in some cases improve robustness.
  • the first step is to select a set of feature points. A point is considered better for selection if it can promise to give a good match in the next frame.
  • each image-matching method defines a corresponding self-matching-based feature point detector and if a point cannot be accurately matched with itself then it cannot be matched robustly with any other point [9].
  • the sharpness of a correlation or SSD peak obtained by matching a shifted image patch with itself under small motion has been the key criterion for many methods [8-10].
  • the autocorrelation matrix This form of the autocorrelation matrix is valid only for a simple translational motion model. For other motion models—e.g., affine motion, the number of parameters and number of dimensions are large.
  • the eigenvalues of the autocorrelation matrix have been used to analyze the local image structure and classify a feature as a corner or an edge [8, 10].
  • Zuliani et al. have analyzed the relationship between different detectors based on the eigenvalues of the autocorrelation matrix [11]. They give a criterion for feature-selection called the condition number.
  • the condition number K trans measures the sensitivity of E(u x ,v y ) to the perturbations ( ⁇ u x , ⁇ v y ). It is given by:
  • is a small number used for numerical stability.
  • High value of a condition number means high sensitivity of the autocorrelation to the perturbations, which in turn means that the autocorrelation has a sharp peak at the point of interest.
  • points are short-listed as feature-point candidates based on the strength of the image gradient at that point. If depth Z i changes much around the point p i in the virtual image I V , the point may be close to a 3D edge and therefore, is not good for tracking or subsequently for pose estimation. Hence, thresholding is applied on the standard deviation of depths around the selected points to reject few more. These points are then sorted according to their condition number. Finally, the top 20 points are selected for tracking.
  • the pose estimation step Given the 3D locations W i of n points in one reference frame and their 2D images (u i ,v i ), through perspective projection in another reference frame, solving for the rotation and translation (R,T) between the reference frames is known as 3D-2D pose estimation problem.
  • the goal of the pose estimation step is to estimate (R,T) given W i and (u i ,v i ).
  • R R x ⁇ R y ⁇ R z ⁇ ⁇
  • R x [ 1 0 0 0 cos ⁇ ⁇ ⁇ - sin ⁇ ⁇ ⁇ 0 sin ⁇ ⁇ ⁇ cos ⁇ ⁇ ⁇ ]
  • R y [ cos ⁇ ⁇ ⁇ 0 sin ⁇ ⁇ ⁇ 0 1 0 - sin ⁇ ⁇ ⁇ 0 cos ⁇ ⁇ ⁇ ]
  • R z [ cos ⁇ ⁇ ⁇ - sin ⁇ ⁇ ⁇ 0 sin ⁇ ⁇ ⁇ cos ⁇ ⁇ ⁇ 0 0 0 1 ] ( 9 )
  • a 3D world point W transformed by (R, T) is given by:
  • the method typically converges in 3 or 4 iterations.
  • the virtual image I V is re-rendered using the estimate for (R,T). This brings I V visually closer to I R5 . But due to the presence of drift errors, I V is still not a good match for I R5 .
  • the fine registration step estimates the residual motion (R′,T′) between I V and I R5 .
  • Iv is re-rendered using (R′,T′) to complete one loop of the guidance algorithm.
  • a fast way to register the two sources together is to use the same method as used for tracking. The only difference being that the correspondence will be found between the virtual image I V and real image I R5 .
  • the points, however, are selected on I R5 using the autocorrelation criterion. Since most of the information is contained in dark areas, the points are selected so that they sample all the dark regions. The selected points are matched with I V using the correlation as the matching criterion in a Gaussian pyramid set up.
  • the next step is to run the pose estimation algorithm and update I V using the estimated pose. Although this method is fast, the matching does not work well for all image pairs I V and I R5 .
  • the accuracy of the method depends on the distance of the bronchoscope from the branching point in the airway and the number of branches seen in I R5 . Manual registration uses this same method, but the corresponding points are provided manually.
  • the goal is to register a real source image with a real target image by iteratively warping the source image towards the target image [6].
  • the 2D image motion of a point in the source image or optical flow (u xi , v yi ) is governed by the 3D rotation and translation through:
  • the source image is I V and the target image is I R5 .
  • the optical flow constraint (18) is based on the SSD criterion for matching. Since in our case, both the virtual image I V and the real image I R5 are from two different sources, the optical flow constraint cannot be used directly. However, if I V and I R5 are normalized by subtracting the mean before registration, then (18) becomes a valid constraint and then both (17) and (18) can be used together for fine registration.
  • FIGS. 4A-4C demonstrate the manual registration step applied to a pair of virtual images.
  • the six corresponding points are given manually across the two images.
  • the unknown pose is computed by the pose estimation method using the correspondence and the depth-map associated with the virtual image on left.
  • the virtual image on left is re-rendered using the estimate for pose. This results in a match between the left and the right image.
  • the pose estimation method is very fast and generates the match instantaneously.
  • the accuracy of the registration is dependent on the quality of the correspondence.
  • FIG. 5 illustrates the use of the manual registration step for the initial registration of the virtual and real image to start the guidance method.
  • FIGS. 6A-6C show the result of using the method for pose estimation by Lu et al. and demonstrates its unsuitability for our domain [17]. Although the correspondence has small errors (on the order of one pixel), we get large errors in the computed translation. Given below is a comparison between the correct pose (R,T) and computed pose (R1,T1):
  • FIGS. 7A and 7B show the computed corresponding matching point on the real image I R5 , given an input point on the virtual image I V .
  • the white point shows the initial guess for the match.
  • the black point shows the final match obtained using the correlation criterion in a Gaussian pyramid set up.
  • the use of Gaussian pyramid takes care of a large motion and saves on computation time by reducing the search space S.
  • FIGS. 8A and 8B show the results obtained by applying the registration step to a virtual image and a real image.
  • the points used for correspondence are displayed, too. Although for these two cases, the registration result is good, in general this is not the case.
  • the accuracy of the registration step depends on the quality of the correspondence. Good correspondence is not found, when the bronchoscope is either near or far from the bifurcations. In that case, the optical-flow-based fine registration step is used.
  • FIGS. 9A and 9B illustrate the optical-flow-based method for registration by Helferty et al. [6].
  • the source image is warped towards the target image, iteratively to recover the residual motion. It is a gradient-based approach which can quickly recover the residual motion between I V and I R5 .
  • Fast tracking is an essential step in keeping the two sources together for guidance during bronchoscopy. It is not possible to escape from drift errors due to tracking, as they arise partially from small errors in the 3D image data. A fine registration step is then necessary to take care of drift errors.
  • Feature-based 3D-2D pose estimation is a fast and stable technique to do tracking. It does not suffer from instability associated with computing an essential matrix. If correspondence is computed across both the real and virtual images, then this same set up can be used for registration as well.
  • the application has far-reaching applications, particularly in the field of image-guided endoscopy.

Abstract

A method provides guidance to the physician during a live bronchoscopy or other endoscopic procedures. The 3D motion of the bronchoscope is estimated using a fast coarse tracking step followed by a fine registration step. The tracking is based on finding a set of corresponding feature points across a plurality of consecutive bronchoscopic video frames, then estimating for the new pose of the bronchoscope. In the preferred embodiment the pose estimation is based on linearization of the rotation matrix. By giving a set of corresponding points across the current bronchoscopic video image, and the CT-based virtual image as an input, the same method can also be used for manual registration. The fine registration step is preferably a gradient-based Gauss-Newton method that maximizes the correlation between the bronchoscopic video image and the CT-based virtual image. The continuous guidance is provided by estimating the 3D motion of the bronchoscope in a loop. Since depth-map information is available, tracking can be done by solving a 3D-2D pose estimation problem. A 3D-2D pose estimation problem is more constrained than a 2D-2D pose estimation problem and does not suffer from the limitations associated with computing an essential matrix. The use of correlation-based cost, instead of mutual information as a registration cost, makes it simpler to use gradient-based methods for registration.

Description

    REFERENCE TO RELATED APPLICATIONS
  • This application is a continuation of U.S. patent application Ser. No. 11/437,229, filed May 19, 2006, which claims priority to U.S. Provisional Patent Application Ser. No. 60/683,595, filed May 23, 2005, the entire content of each of which is incorporated herein by reference.
  • GOVERNMENT SPONSORSHIP
  • This invention was made with government support under Grant No. R01 CA074325, awarded by the National Institutes of Health. The government has certain rights in the invention.
  • FIELD OF THE INVENTION
  • This invention relates generally to bronchoscopy and, in particular, to a method that provides guidance to the physician during a live bronchoscopy or other applications.
  • BACKGROUND OF THE INVENTION
  • For lung cancer assessment, the physician needs to perform a biopsy of the suspect cancer sites, such as the peripheral nodules or mediastinal lymph nodes. Such sites are first identified by analyzing the 3D CT image data of the chest. Later, during bronchoscopy, the physician attempts to reach these sites with the help of the live video obtained from a bronchoscope. The success of a standard bronchoscopy depends heavily on the skill level and experience of the physician. The success of the bronchoscopy could be increased if the physician received some form of guidance during the procedure.
  • Several guidance methods have been suggested in the past few years [1-5]. All of them use a CT-based (virtual) endoluminal rendering of the airway surface to obtain both the depth and visual data. They try to find the 3D location and orientation of the bronchoscope (pose) using the virtual renderings and incoming video frames. Bricault et al. proposed a method to register the bronchoscopic video (real) and 3D CT virtual bronchoscopic images [1]. The method uses the segmentation and shape from shading techniques to find the 3D surface for the real image and then does a 3D-3D registration of the computed surface with the virtual surface.
  • Mori et al. proposed a method which first tracks a set of points across the real frames to estimate the bronchoscopic motion by computing the essential matrix and then does an estimation of the residual motion using image registration by Powell's method [3]. In [5], Mori et al. use a Kalman filter to predict bronchoscope motion and a new similarity measure to reduce the image area to be registered. Helferty et al. use a coarse tracking and fine registration approach [2,6]. The tracking is implemented by using the standard optical-flow constraint equation and depth-map information from the virtual rendering to estimate the motion parameters. The registration is done by maximizing the mutual information between the real and virtual image using the simplex method.
  • The method proposed by Bricault et al. does not involve tracking and is limited to the bifurcation images [1]. The method of Mori et al. computes the essential matrix for tracking [3] and Powell's method for registration. The approach has three limitations. Firstly, the use of Powell's method makes the registration step slow. Secondly, the essential matrix cannot be determined if a subset of points are coplanar [7]. Thirdly, a translation can only be recovered up to a scale from the estimated essential matrix [7]. The optical-flow approach taken by Helferty et al. for tracking is slow since it involves iterative warping and computation of gradients for the images [2, 6]. Use of simplex method makes the registration step slow as well.
  • SUMMARY OF THE INVENTION
  • This invention broadly resides in a system and method for providing guidance in conjunction with a diagnostic procedure. The method includes the steps of providing previously acquired image data of a body lumen, acquiring live image data of the body lumen, and registering the previously acquired image data and the live image data in real time or near real-time. In the preferred embodiment, the registration is used to guide an instrument such as an endoscope, bronchoscope, colonoscope or laparoscope.
  • The previously acquired image data may be derived from virtual image data, including computerized tomographic (CT) slices. Alternatively, the previously acquired image data may be derived from a prerecorded video image. The live image data may be derived from video data acquired during the diagnostic procedure or from a stream of incoming virtual images.
  • The invention has particular applicability to guidance during a live bronchoscopy. The 3D motion of the bronchoscope is estimated using a fast coarse tracking step followed by a fine registration step as necessary for correction purposes. The tracking is based on finding a set of corresponding feature points across a plurality of consecutive bronchoscopic video frames, then estimating for the new pose of the bronchoscope.
  • In the preferred embodiment the pose estimation is based on linearization of the rotation matrix. By giving a set of corresponding points across the current bronchoscopic video image, and the CT-based virtual image as an input, the same method can also be used for manual registration.
  • The fine registration step is a gradient-based Gauss-Newton method that maximizes the correlation-based cost between the bronchoscopic video image and the CT-based virtual image. The continuous guidance is provided by estimating the 3D motion of the bronchoscope in a loop.
  • Since depth-map information is available, the tracking can be done by solving a 3D-2D pose estimation problem. A 3D-2D pose estimation problem is more constrained than a 2D-2D pose estimation problem and does not suffer from the limitations associated with computing an essential matrix. The use of correlation-based cost, instead of mutual information as a registration cost, makes it simpler to use gradient-based methods for registration.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • FIG. 1 shows a set of 5 consecutive bronchoscopic video (real) frames displaying motion of the bronchoscope inside the airway tree;
  • FIG. 2 shows the CT-based (virtual) endoluminal rendering of the airway surface based on the current estimate of the position and the orientation (pose) of the bronchoscope;
  • FIG. 3 shows the overall method of the invention;
  • FIG. 4A-4C demonstrate the manual registration step applied to a pair of virtual images, wherein FIG. 4A shows the initial unregistered pair of virtual images, FIG. 4B shows the 6-point correspondence given manually, and FIG. 4C shows the registered pair after the pose estimation step;
  • FIG. 5 illustrates the use of the manual registration step for the initial registration of the virtual and real image to start the guidance method;
  • FIGS. 6A-6C show the result of using the method by Lu et al. for pose estimation, wherein FIG. 6A shows the virtual image IV close to the real image IRc on right with the matching points, FIG. 6B shows the real image IRc close to the virtual image IV on left with the latching points, and FIG. 6C shows the re-rendered virtual image IV after the pose estimation step;
  • FIGS. 7A and 7B show the computed corresponding matching point on the real image IR5, given an input point on the virtual image IV;
  • FIGS. 8A and 8B show the results obtained by applying a registration step to a virtual image and a real image; and
  • FIGS. 9A-9C illustrate the optical-flow-based method for registration by Helferty et al.
  • DETAILED DESCRIPTION OF THE INVENTION
  • As discussed in the Summary of the Invention, to track the 3D motion of the bronchoscope, we use the fast coarse tracking and subsequent fine registration approach. We propose a 3D-2D pose estimation algorithm for tracking and a gradient-based Gauss-Newton method for registration which uses correlation-based cost as its cost function.
  • It should be noted that even if the tracking algorithm is 100 percent accurate, one cannot avoid the fine registration step. This is because the 3D virtual surface data is not an accurate representation of the actual airway tree. The presence of the imaging artifacts, segmentation errors and issues related to lung capacity cause this. Hence, there will always be some drift errors during the tracking. If the drift errors are not taken care of by the registration step, they will accumulate to a point where tracking is no longer successful.
  • In general the fine registration step takes more time. Accordingly, most of the motion should be estimated by a fast tracking method and the fine registration should only be done for correction. For tracking, we use correspondence of points between the real video frames along with the depth-map information from the virtual rendering to solve a 3D-2D pose estimation problem. Since the accumulated rotation is small over a small number of consecutive real frames, linearization of the rotation matrix can be done. Thus, the 3D-2D pose estimation problem reduces to solving a linear system of equations. The same method can be used for manual registration if the manual correspondence between the real and virtual image is given. For the fine registration step, we use the approach used for tracking by Helferty et al. [6]. This can be done by replacing the optical-flow constraint equation by a similar constraint based on correlation and replacing the source image with the virtual image.
  • FIG. 1 shows a set of 5 consecutive bronchoscopic video (real) frames displaying motion of the bronchoscope inside the airway tree. The first frame is considered as the current video frame IRc and the last frame is considered as IR5. The frames in between are denoted by IR2, IR3 and IR4. FIG. 2 shows the CT-based (virtual) endoluminal rendering of the airway surface based on the current estimate of the position and the orientation (pose) of the bronchoscope. The virtual image IV is visually similar to the current video frame IRc. The goal is to re-render the virtual image IV so that it looks like IR5, the real frame which is five frames apart from the current video frame IRc. This can be done by making use of the image motion observed in the real frames, the depth-map from the virtual rendering, and the visual similarity between the virtual image and real images.
  • FIG. 3 shows the overall method. The first step is to do an initial registration of the virtual image IV with the current real image IRc, either manually or automatically. The manual registration is done by giving corresponding points across the real and virtual image. In the preferred embodiment 6 points are used. Since the points in the virtual image also have the depth data associated with them denoted by Wi or (Xi,Yi,Zi), the 3D-2D pose estimation method is applied to get the current pose or the 3D motion of the bronchoscope (R,T), which will make virtual image IV look the same as the current real image IRc. IV is re-rendered using the pose estimate. Automatic registration is done by the fine registration step.
  • The second step is to choose a multiplicity of points from the current real frame IRc to be tracked over a plurality of consecutive frames. In the preferred embodiment 20 points are tracked across 5 frames. Since IV is registered with IRc, we know the depths Wi associated with each point from the current depth-map. The third step is to track these 20 points using pairwise correspondence over the next 5 frames to get their new 2D locations (ui,vi). The fourth step is to estimate the new pose (R,T) using the 2D motion of tracked points and their initial depths Wi. In the fifth step, the virtual image IV is re-rendered using the new pose (R,T). The sixth step is to do fine registration between IV and IR5 to take care of the drift errors due to tracking and then re-render IV. Finally, IR5 is assigned as the new current real frame IRc and the algorithm goes from the second to the sixth step in a loop for continuous guidance.
  • Selection and Tracking of Feature Points
  • For fast coarse tracking of the bronchoscope, 20 feature points pi are selected on image IRc. IV is the matching virtual image for IRc and hence provides the depth-map information for each pi. Every pi has an associated depth given by the depth-map and its 3D location is given by Wi or (Xi,Yi,Zi). Each feature point pi is tracked over frames IR2, IR3, IR4, and IR5 to get their new image location (ui, vi) in IRS. The selection criterion for a feature point is entirely dependent on the method used for tracking it. It is for this reason that we explain the tracking method before the selection method.
  • Tracking
  • Once a point is selected in image IRc, it has to be tracked over frames IR2, IR3, IR4, and IR5. Tracking of feature points is done frame by frame by finding a matching corresponding point in the next frame IRi+1 for each feature point in the previous frame IRi. Matching is done by finding the local shift (ux ,vy ) applied to previous location of point (x,y) in IRi, which minimizes the sum of squared differences (SSD) of image intensity patch around the point (x,y) in IRi and the shifted point in IRi+1:
  • ( u x * , v w * ) = arg min ( u x , v w ) ( p , q ) w ( p , q ) [ I R i + 1 ( x + u x + p , y + v w + q ) - I R i ( x + p , y + q ) ] 2 ( 1 )
  • In (1), w is a Gaussian window function applied to get better centering or localization of a matched point, (ux,vy) is varied over a search window S and (p,q) is varied over a patch P. The match of point (x,y) in IRi is given by (x+ux ,y+vy ) in IRi+1.
  • Since the camera motion is assumed to be small between the frames, a simple translational image motion model is used, as justified by Shi and Tomasi [8]. To accommodate larger motion, a Gaussian pyramid is constructed.
  • The larger motion is estimated at a coarser level. This reduces the computation, since a smaller window P can be used for a template intensity patch and the search space S remains small at all the levels in the pyramid.
  • Selection
  • Before tracking, feature points pi are chosen from frame IRc. A feature-based approach tries to use a small amount of image data to save computation and in some cases improve robustness. For a feature-based tracking, the first step is to select a set of feature points. A point is considered better for selection if it can promise to give a good match in the next frame. According to Triggs, each image-matching method defines a corresponding self-matching-based feature point detector and if a point cannot be accurately matched with itself then it cannot be matched robustly with any other point [9]. Hence the sharpness of a correlation or SSD peak obtained by matching a shifted image patch with itself under small motion has been the key criterion for many methods [8-10].
  • The SSD of an image patch with itself as a function E(ux,vy) of a shift (ux,vy) is given by:
  • E ( u x , v y ) = ( x , y ) [ I ( x + u x , y + v y ) - I ( x , y ) ] 2 ( 2 )
  • where (x,y) is varied over a patch P. For a small shift (ux,vy),
  • E ( u x , v y ) = ( x , y ) [ u x I x ( x , y ) + v y I y ( x , y ) ] 2 = [ u x v y ] [ I x 2 I x I y I x I y I y 2 ] [ u x v y ] and ( 3 ) A = [ I x 2 I x I y I x I y I w 2 ] ( 4 )
  • is known as the autocorrelation matrix. This form of the autocorrelation matrix is valid only for a simple translational motion model. For other motion models—e.g., affine motion, the number of parameters and number of dimensions are large. The eigenvalues of the autocorrelation matrix have been used to analyze the local image structure and classify a feature as a corner or an edge [8, 10].
  • Zuliani et al. have analyzed the relationship between different detectors based on the eigenvalues of the autocorrelation matrix [11]. They give a criterion for feature-selection called the condition number. The condition number Ktrans measures the sensitivity of E(ux,vy) to the perturbations (Δux,Δvy). It is given by:

  • K trans=∥(A+d)−1∥  (5)
  • where ε is a small number used for numerical stability. High value of a condition number means high sensitivity of the autocorrelation to the perturbations, which in turn means that the autocorrelation has a sharp peak at the point of interest.
  • For implementation, around 60 points are short-listed as feature-point candidates based on the strength of the image gradient at that point. If depth Zi changes much around the point pi in the virtual image IV, the point may be close to a 3D edge and therefore, is not good for tracking or subsequently for pose estimation. Hence, thresholding is applied on the standard deviation of depths around the selected points to reject few more. These points are then sorted according to their condition number. Finally, the top 20 points are selected for tracking.
  • Pose Estimation
  • After a feature point Pi has been selected and tracked, its 3D location Wi in frame IRc and its new 2D location (ui,vi) in frame IR5 are known. Between frames IRc and IR5, the bronchoscope has undergone a 3D motion (R,T).
  • Given the 3D locations Wi of n points in one reference frame and their 2D images (ui,vi), through perspective projection in another reference frame, solving for the rotation and translation (R,T) between the reference frames is known as 3D-2D pose estimation problem. Thus, the goal of the pose estimation step is to estimate (R,T) given Wi and (ui,vi).
  • Many different classes of algorithms have been developed to solve this problem. Closed-form solutions exist for three or four points unless they are in a critical configuration [12-14]. These methods make use of the rigid geometrical constraints between the points to solve for a polynomial system of equations. For more than 4 points, one class of methods express a system of higher-order equations as a system of linear equations (over-dimensioning) to solve for depths first and then use the solution to absolute orientation problem to solve for the pose [15, 16]. Lu et al. give a fast iterative algorithm to determine the pose [17]. However, the method introduces large bias errors in the estimate of the translation when the object is very close to the camera or the depth of the object is comparable to the distance between the object and the camera, which holds true in our domain of application.
  • Since the feature tracking is done over a few frames at a time, it can be assumed that the accumulated rotation is small. Our method uses this assumption to linearize the rotation matrix. Our method is very close to Lowe's method [18] and the least-squares adjustment step done by Haralick et al. [19].
  • A 3D rotation matrix R is given by
  • R = R x R y R z where ( 6 ) R x = [ 1 0 0 0 cos θ - sin θ 0 sin θ cos θ ] ( 7 ) R y = [ cos ψ 0 sin ψ 0 1 0 - sin ψ 0 cos ψ ] ( 8 ) R z = [ cos φ - sin φ 0 sin φ cos φ 0 0 0 1 ] ( 9 )
  • where θ, ψ and φ are the rotation angles around each axis. For small values of θ, ψ and φ, the rotation matrix can be written as
  • R = I + [ w ] x = I + [ 0 - φ ψ φ 0 - θ - ψ θ 0 ] ( 10 )
  • A 3D world point W transformed by (R, T) is given by:
  • W = R * W + T = ( I + [ w ] x ) * W + T = [ X Y Z ] + [ θ ψ φ ] × [ X Y Z ] + [ t x t y t z ] = [ X + ψ Z - φ Y + t x Y + φ X - θ Z + t y Z + θ Y - ψ X + t z ] ( 11 )
  • The image of W′ through perspective projection is given by:
  • u = f X Z v = f Y Z ( 12 )
  • where f is the focal length. Henceforth, without loss of generality, f will be assumed to be 1.
  • Given n world points (Xi, Yi, Zi) and their image points (ui, vi) in another reference frame, we have to find
  • ( R * , T * ) = arg min ( R , T ) i = 1 n [ ( u i - X i Z i ) 2 + ( v i - Y i Z i ) 2 ] ( 13 )
  • where (Xi ,Yi ,Zi ) are given by (11). We can solve for (R, T) using following equations:
  • u i = X i + ψ Z i - φ Y i + t x Z i + θ Y i - ψ X i + t z v i = Y i + φ X i - θ Z i + t y Z i + θ Y i - ψ X i + t z i = 1 n ( 14 )
  • This gives an over-constrained system of linear equations:
  • [ - u i Y i u i X i + Z i - Y i 1 0 - u i v i Y i - Z i v i X i X i 0 1 - v i ] [ θ ψ φ t x t y t z ] = [ u i Z i - X i v i Z i - Y i ] ( 15 )
  • The linear system of equations (15), can be solved using singular value decomposition (SVD), although care should be taken to make very small singular values equal to zero while solving. Since the linearized form (10) of R is an approximation, we have to a iterate few more times to reach the correct solution for (R,T). Using the current solution for (R,T), the 3D points Wi are transformed to get a new estimate for Wi . The residual transformation (R′,T′) should be determined by treating Wi as the new Wi in (11). Then, (R,T) are updated as follows:

  • R=R′‡∓R T=R′‡∓T+T   (16)
  • The method typically converges in 3 or 4 iterations.
  • 3D CT Registration
  • After the pose estimation step, the virtual image IV is re-rendered using the estimate for (R,T). This brings IV visually closer to IR5. But due to the presence of drift errors, IV is still not a good match for IR5. Using correlation as a criterion for visual match and the depth-map associated with IV, the fine registration step estimates the residual motion (R′,T′) between IV and IR5. Iv is re-rendered using (R′,T′) to complete one loop of the guidance algorithm.
  • Registration using Correspondence
  • A fast way to register the two sources together is to use the same method as used for tracking. The only difference being that the correspondence will be found between the virtual image IV and real image IR5. The points, however, are selected on IR5 using the autocorrelation criterion. Since most of the information is contained in dark areas, the points are selected so that they sample all the dark regions. The selected points are matched with IV using the correlation as the matching criterion in a Gaussian pyramid set up. The next step is to run the pose estimation algorithm and update IV using the estimated pose. Although this method is fast, the matching does not work well for all image pairs IV and IR5. The accuracy of the method depends on the distance of the bronchoscope from the branching point in the airway and the number of branches seen in IR5. Manual registration uses this same method, but the corresponding points are provided manually.
  • Registration Using Maximization of Correlation
  • Helferty et al. use the optical flow constraint equation along with the linearization of rotation matrix and the depth-map from the virtual image to do tracking [6]. We propose to use the same approach for fine registration of the virtual image IV with the real image IR5.
  • In the method given by Helferty et al., the goal is to register a real source image with a real target image by iteratively warping the source image towards the target image [6]. The 2D image motion of a point in the source image or optical flow (uxi, vyi) is governed by the 3D rotation and translation through:
  • u xi = ψ Z i - φ Y i + t x θ Y i - ψ X i + t z v yi = φ X i - θ Z i + t y θ Y i - ψ X i + t z ( 17 )
  • Its derivation is almost the same as given above. The optical flow constraint equation used to determine (ux, vy) is given by:

  • u x I x +v y +I y I t=0   (18)
  • Using (17) and (18), a system of linear equations is set up to iteratively solve for (R, T). After each step, warping and computation of the gradients of the source image is done for the next iteration until convergence. The details can be found in [6].
  • In our case, the source image is IV and the target image is IR5. The optical flow constraint (18) is based on the SSD criterion for matching. Since in our case, both the virtual image IV and the real image IR5 are from two different sources, the optical flow constraint cannot be used directly. However, if IV and IR5 are normalized by subtracting the mean before registration, then (18) becomes a valid constraint and then both (17) and (18) can be used together for fine registration.
  • EXAMPLES
  • FIGS. 4A-4C demonstrate the manual registration step applied to a pair of virtual images. The six corresponding points are given manually across the two images. The unknown pose is computed by the pose estimation method using the correspondence and the depth-map associated with the virtual image on left. The virtual image on left is re-rendered using the estimate for pose. This results in a match between the left and the right image. The pose estimation method is very fast and generates the match instantaneously. The accuracy of the registration is dependent on the quality of the correspondence.
  • FIG. 5 illustrates the use of the manual registration step for the initial registration of the virtual and real image to start the guidance method. FIGS. 6A-6C show the result of using the method for pose estimation by Lu et al. and demonstrates its unsuitability for our domain [17]. Although the correspondence has small errors (on the order of one pixel), we get large errors in the computed translation. Given below is a comparison between the correct pose (R,T) and computed pose (R1,T1):
  • R = [ 1 - 0.0061 0.0061 0.0064 0.9991 - 0.0417 - 0.0058 0.0417 0.9991 ] T = [ 0.0412 - 0.1444 - 0.1171 ] R 1 = [ 0.8154 0.5763 0.0542 0.5781 - 0.8155 - 0.0262 - 0.0291 - 0.0527 0.9982 ] T 1 = [ 2.2667 - 0.1280 16.0598 ]
  • The link to the Matlab code for the pose estimation method by Lu et al. is given in the paper [17].
  • After feature selection, tracking and pose estimation, the fine registration step is required to take care of the drift errors. The fine registration step can either be based on correspondence or on optical-flow. FIGS. 7A and 7B show the computed corresponding matching point on the real image IR5, given an input point on the virtual image IV. On the real image, the white point shows the initial guess for the match. The black point shows the final match obtained using the correlation criterion in a Gaussian pyramid set up. The use of Gaussian pyramid takes care of a large motion and saves on computation time by reducing the search space S.
  • FIGS. 8A and 8B show the results obtained by applying the registration step to a virtual image and a real image. The points used for correspondence are displayed, too. Although for these two cases, the registration result is good, in general this is not the case. The accuracy of the registration step depends on the quality of the correspondence. Good correspondence is not found, when the bronchoscope is either near or far from the bifurcations. In that case, the optical-flow-based fine registration step is used.
  • FIGS. 9A and 9B illustrate the optical-flow-based method for registration by Helferty et al. [6]. The source image is warped towards the target image, iteratively to recover the residual motion. It is a gradient-based approach which can quickly recover the residual motion between IV and IR5.
  • Fast tracking is an essential step in keeping the two sources together for guidance during bronchoscopy. It is not possible to escape from drift errors due to tracking, as they arise partially from small errors in the 3D image data. A fine registration step is then necessary to take care of drift errors. Feature-based 3D-2D pose estimation is a fast and stable technique to do tracking. It does not suffer from instability associated with computing an essential matrix. If correspondence is computed across both the real and virtual images, then this same set up can be used for registration as well.
  • At least two other alternatives are available for guidance in the case of bronchoscopy. These alternatives include:
      • 1. The previously acquired image data is a prerecorded bronchoscopic video image sequence with associated depth information and the live source is incoming video from a bronchoscope.
      • 2. The previously acquired image data is a prerecorded bronchoscopic video image sequence with associated depth information and the live source is a stream of incoming virtual images, as may be acquired when interactively navigating through a 3D CT image.
  • The application has far-reaching applications, particularly in the field of image-guided endoscopy.
  • In summary, we disclose a new 3D-2D pose estimation method based on linearization of the rotation matrix. The method is iterative and has fast convergence in case of small rotation. Using normalized images in the optical-flow constraint equation makes it possible to use the gradient-based registration method by Helferty et al. for fine registration [6]. This approach is faster than using simplex method or Powell's method for registration.
  • REFERENCES
    • 1. I. Bricault, G. Ferretti, and P. Cinquin, “Registration of real and CT-derived virtual bronchoscopic images to assist transbronchial biopsy,” IEEE Transactions on Medical Imaging, Vol. 17, No. 5, pp. 703-714, October 1998.
    • b 2. W. E. Higgins, J. P. Helferty, and D. R. Padfi, “Integrated bronchoscopic video tracking and 3D CT registration for virtual bronchoscopy,” SPIE Medical Imaging 2003: Physiology and Function: Methods, Systems, and Applications, A. Clough and A. Amini (eds) 5031, pp. 80-89, May 2003.
    • 3. K. Mori, D. Deguchi, J. Hasegawa, Y. Suenaga, J. Toriwaki, H. Takabatake, and H. Natori, “A method for tracking the camera motion of real endoscope by epipolar geometry analysis and virtual endoscopy system,” MICCAI '01: Proceedings of the 4th International Conference on Medical Image Computing and Computer-Assisted Intervention, pp. 1-8, 2001.
    • 4. H. Shoji, K. Mori, J. Sugiyama, Y. Suenaga, J. Toriwaki, H. Takabatake, and H. Natori, “Camera motion tracking of real endoscope by using virtual endoscopy system and texture information,” SPIE Medical Imaging 2001: Physiology and Function from Multidimensional Images, Chin-Tu Chen and Anne V. Clough (eds) 4321, pp. 122-133, May 2001.
    • 5. K. Mori, T. Enjoji, D. Deguchi, T. Kitasaka, Y. Suenaga, J. Toriwaki, H. Takabatake, and H. Natori, “New image similarity measures for bronchoscope tracking based on image registration between virtual and real bronchoscopic images,” SPIE Medical Imaging 2004: Physiology and Function from Multidimensional Images, Amir A. Amini and Armando Manduca (eds) 5369, pp. 165-176, April 2004.
    • 6. J. P. Helferty and W. E. Higgins, “Combined endoscopic video tracking and virtual 3D CT registration for surgical guidance,” IEEE Int. Conference on Image Processing, pp. 11-961-11-964, September 2002.
    • 7. R. I. Hartley and A. Zisserman, Multiple View Geometry in Computer Vision, Cambridge University Press, ISBN: 0521623049, 2000.
    • 8. J. Shi and C. Tomasi, “Good features to track,” IEEE Conf. Computer Vision and Pattern Recognition, pp. 593-600, June 1994.
    • 9. B. Triggs, “Detecting keypoints with stable position, orientation and scale under illumination changes,” European Conference on Computer Vision, pp. IV 100-113, May 2004.
    • 10. C. Harris and M. Stephens, “A combined corner and edge detector,” Alvey Vision Conference, pp. 147-151, 1988.
    • 11. M. Zuliani, C. Kenney, and B. S. Manjunath, “A mathematical comparison of point detectors,” IEEE Image and Video Registration Workshop, June 2004.
    • 12. M. Fischler and R. C. Bolles, “Random sample consensus: A paradigm for model fitting with applications to image analysis and automated cartography,” Comm. ACM 24(6), pp. 381-395, 1981.
    • 13. R. Horaud, B. Canio, and 0. Leboullenx, “An analytic solution for the perspective 4-point problem,” Computer Vision, Graphics, and Image Processing (1), pp. 33-44, 1989.
    • 14. R. M. Haralick, C. Lee, K. Ottenberg, and M. Nolle, “Analysis and solutions of the three point perspective pose estimation problem,” Computer Vision and Pattern Recognition, pp. 592-598, 1991.
    • 15. A. Ansar and K. Daniildis, “Linear pose estimation from points or lines,” IEEE Transactions on Pattern Analysis and Machine Intelligence 25, pp. 578-589, May 2003.
    • 16. L. Quan and Z. Lan, “Linear n-point camera pose determination,” IEEE Transactions on Pattern Analysis and Machine Intelligence 21(8), pp. 774-780, 1999.
    • 17. C. Lu, G. D. Hager, and E. Mjolsness, “Fast and globally convergent pose estimation from video images,” IEEE Transactions on Pattern Analysis and Machine Intelligence 22(6), pp. 610-622, 2000.
    • 18. D. G. Lowe, “Fitting parametrized three-dimensional models to images,” IEEE Transactions on Pattern Analysis and Machine Intelligence 13(5), pp. 441-450, 1991.
    • 19. R. M. Haralick, H. Joo, C. Lee, X. Zhuang, V. G. Vaidya, and M. B. Kim, “Analysis and solutions of the three point perspective pose estimation problem,” IEEE Transactions on Systems, Man, and Cybernetics 19(6), pp. 1426-1446, 1989.

Claims (32)

1. A video-based method for providing a pose estimate of an endoscope in conjunction with a live endoscopic procedure, the method comprising:
acquiring 3D image data of a target structure in advance of a live endoscopic procedure;
receiving a frame of live endoscopic video image data including the target structure; and
registering the frame of endoscopic video image data with acquired 3D image data to determine a pose estimate of the endoscope.
2. The method of claim 1, wherein the pose estimate is used to guide the endoscope to a suspect site.
3. The method of claim 2, wherein the suspect site is a mediastinal lymph node.
4. The method of claim 1, wherein the endoscope is a bronchoscope.
5. The method of claim 1, wherein the target structure is the airway tree.
6. The method of claim 5, wherein the registration is performed either near to, or far from, a bifurcation I an airway tree.
7. The method of claim 1, wherein the registration comprises an initial registration step to initiate guidance of the endoscope.
8. The method of claim 1, wherein the registration step includes the steps of:
a) estimating a three-dimensional location of the endoscope using (i) known motion information from said live endoscopic video image data, and (ii) local depth information obtained from the previously acquired 3D image data; and
b) determining a new pose of the endoscope based on the 3D location estimated in step (a).
9. The method of claim 8, further including the step of performing a fine registration step to minimize errors associated with estimating the 3D motion of the endoscope.
10. The method of claim 9, wherein the fine registration step is performed manually.
11. The method of claim 8, wherein the registration step further includes the steps of:
(c) updating the previously acquired 3D image data in accordance with the new pose; and
(d) repeating steps (a) through (c) until the guidance is terminated.
12. The method of claim 1, including the step of receiving a sequence of consecutive video image frames as opposed to a single frame.
13. The method of claim 12, wherein the sequence of video image frames is 5 consecutive video frames.
14. A video-based method for registering previously acquired 3D image data and live endoscopic video image data of a patient to obtain a current pose of an endoscope comprising:
a) performing an initial registration to register the previously acquired 3D image data and a frame of the live video image data to obtain a current pose and a current depth map;
b) selecting a plurality of points associated with the live video image data;
c) tracking the points over a plurality of consecutive frames to estimate the two-dimensional (2D) motion of the tracked points;
d) deriving a three-dimensional (3D) motion of the endoscope using the 2D motion of the tracked points and the current depth map;
e) determining a new pose based on the current depth map and 3D motion of the endoscope; and
f) updating the current pose based upon the new pose.
15. The method of claim 14, wherein steps b) through f) are repeated until reaching a suspect site.
16. The method of claim 15, wherein said site is along an airway.
17. A video-based method for providing a pose estimate of an endoscope in conjunction with a live endoscopic procedure, the method comprising:
receiving a frame of live endoscopic video image data of a target structure from the endoscope; and
registering previously acquired 3D image data of the target structure and the frame of endoscopic video image data of the target structure to provide a pose estimate of the endoscope; and
wherein the step of registering is performed using information arising from said frame of endoscopic video image data and the previously acquired 3D image data.
18. The method of claim 17, wherein the step of registering the previously acquired 3D image data and the live video image data is used for guiding said endoscope to a suspect site.
19. The method of claim 18, wherein said suspect site is a mediastinal lymph node.
20. The method of claim 17, wherein the endoscope is a bronchoscope.
21. The method of claim 17, wherein said target structure is the airway tree.
22. The method of claim 21, wherein said registration is performed either near or far from a bifurcation.
23. The method of claim 17, wherein said registering step is an initial registration step to start guidance of the endoscope.
24. The method of claim 18, wherein the registration step includes the steps of:
a) estimating a three-dimensional location of the endoscope using (i) known motion information from said live endoscopic video image data, and (ii) local depth information obtained from the previously acquired 3D image data; and
b) determining a new pose of the endoscope based on the 3D location estimated in step (a).
25. The method of claim 24, further including the step of performing a fine registration step to minimize errors associated with estimating the 3D motion of the endoscope.
26. The method of claim 25, wherein the fine registration step is performed manually.
27. The method of claim 24, wherein the registration step further includes the steps of:
(c) updating the previously acquired 3D image data in accordance with the new pose; and
(d) repeating steps (a) through (c) until the guidance is terminated.
28. The method of claim 17, wherein said receiving comprises receiving a sequence of consecutive video image frames.
29. The method of claim 28, wherein said sequence of video image frames is 5 consecutive video frames.
30. A video-based method for registering previously acquired 3D image data and live endoscopic video image data of a patient to obtain a current pose of an endoscope comprising:
g) performing an initial registration to register the previously acquired 3D image data and a frame of the live video image data to obtain a current pose and a current depth map;
h) selecting a plurality of points associated with the live video image data;
i) tracking the points over a plurality of consecutive frames to estimate the two-dimensional (2D) motion of the tracked points;
j) deriving a three-dimensional (3D) motion of the endoscope using the 2D motion of the tracked points and the current depth map;
k) determining a new pose based on the current depth map and 3D motion of the endoscope; and
l) updating the current pose based upon the new pose.
31. The method of claim 30 comprising repeating steps b) through f) until reaching a suspect site.
32. The method of claim 31, wherein said site is along an airway.
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Cited By (11)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20080306379A1 (en) * 2007-06-06 2008-12-11 Olympus Medical Systems Corp. Medical guiding system
US20120203067A1 (en) * 2011-02-04 2012-08-09 The Penn State Research Foundation Method and device for determining the location of an endoscope
US20140226886A1 (en) * 2011-10-26 2014-08-14 Koh Young Technology Inc. Registration method of images for surgery
US9811913B2 (en) 2015-05-13 2017-11-07 Siemens Healthcare Gmbh Method for 2D/3D registration, computational apparatus, and computer program
US20180220883A1 (en) * 2010-01-28 2018-08-09 The Penn State Research Foundation Image-based global registration system and method applicable to bronchoscopy guidance
US10278615B2 (en) 2012-08-14 2019-05-07 Intuitive Surgical Operations, Inc. Systems and methods for registration of multiple vision systems
CN109978911A (en) * 2019-02-22 2019-07-05 青岛小鸟看看科技有限公司 A kind of characteristics of image point-tracking method and camera
US20200375546A1 (en) * 2019-06-03 2020-12-03 General Electric Company Machine-guided imaging techniques
US11361407B2 (en) * 2017-04-09 2022-06-14 Indiana University Research And Technology Corporation Motion correction systems and methods for improving medical image data
WO2022208253A1 (en) * 2021-03-31 2022-10-06 Auris Health, Inc. Vision-based 6dof camera pose estimation in bronchoscopy
US11529038B2 (en) * 2018-10-02 2022-12-20 Elements Endoscopy, Inc. Endoscope with inertial measurement units and / or haptic input controls

Families Citing this family (74)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP3492008B1 (en) 2005-09-13 2021-06-02 Veran Medical Technologies, Inc. Apparatus and method for image guided accuracy verification
US20070066881A1 (en) 2005-09-13 2007-03-22 Edwards Jerome R Apparatus and method for image guided accuracy verification
EP2117436A4 (en) * 2007-03-12 2011-03-02 David Tolkowsky Devices and methods for performing medical procedures in tree-like luminal structures
US8035685B2 (en) * 2007-07-30 2011-10-11 General Electric Company Systems and methods for communicating video data between a mobile imaging system and a fixed monitor system
US8605988B2 (en) * 2007-12-19 2013-12-10 General Electric Company Image registration system and method
US20110187707A1 (en) * 2008-02-15 2011-08-04 The Research Foundation Of State University Of New York System and method for virtually augmented endoscopy
JP5372406B2 (en) 2008-05-23 2013-12-18 オリンパスメディカルシステムズ株式会社 Medical equipment
JP5372407B2 (en) * 2008-05-23 2013-12-18 オリンパスメディカルシステムズ株式会社 Medical equipment
US20110282151A1 (en) * 2008-10-20 2011-11-17 Koninklijke Philips Electronics N.V. Image-based localization method and system
US8337397B2 (en) 2009-03-26 2012-12-25 Intuitive Surgical Operations, Inc. Method and system for providing visual guidance to an operator for steering a tip of an endoscopic device toward one or more landmarks in a patient
US10004387B2 (en) 2009-03-26 2018-06-26 Intuitive Surgical Operations, Inc. Method and system for assisting an operator in endoscopic navigation
JP2012525190A (en) * 2009-04-29 2012-10-22 コーニンクレッカ フィリップス エレクトロニクス エヌ ヴィ Real-time depth estimation from monocular endoscopic images
US20120069167A1 (en) * 2009-05-18 2012-03-22 Koninklijke Philips Electronics N.V. Marker-free tracking registration and calibration for em-tracked endoscopic system
CN102596003B (en) * 2009-09-17 2015-04-01 博琅科医疗器械有限公司 System for determining airway diameter using endoscope
US8672837B2 (en) 2010-06-24 2014-03-18 Hansen Medical, Inc. Methods and devices for controlling a shapeable medical device
EP2593922A1 (en) * 2010-07-14 2013-05-22 BrainLAB AG Method and system for determining an imaging direction and calibration of an imaging apparatus
US20130303887A1 (en) 2010-08-20 2013-11-14 Veran Medical Technologies, Inc. Apparatus and method for four dimensional soft tissue navigation
IL208600A (en) * 2010-10-10 2016-07-31 Rafael Advanced Defense Systems Ltd Network-based real time registered augmented reality for mobile devices
US9757021B2 (en) * 2011-02-04 2017-09-12 The Penn State Research Foundation Global and semi-global registration for image-based bronchoscopy guidance
US9265468B2 (en) 2011-05-11 2016-02-23 Broncus Medical, Inc. Fluoroscopy-based surgical device tracking method
US9020229B2 (en) * 2011-05-13 2015-04-28 Broncus Medical, Inc. Surgical assistance planning method using lung motion analysis
US8827934B2 (en) 2011-05-13 2014-09-09 Intuitive Surgical Operations, Inc. Method and system for determining information of extrema during expansion and contraction cycles of an object
US8900131B2 (en) * 2011-05-13 2014-12-02 Intuitive Surgical Operations, Inc. Medical system providing dynamic registration of a model of an anatomical structure for image-guided surgery
WO2013016286A2 (en) 2011-07-23 2013-01-31 Broncus Medical Inc. System and method for automatically determining calibration parameters of a fluoroscope
US9138166B2 (en) 2011-07-29 2015-09-22 Hansen Medical, Inc. Apparatus and methods for fiber integration and registration
IN2014CN02655A (en) 2011-10-20 2015-06-26 Koninkl Philips Nv
US9138165B2 (en) 2012-02-22 2015-09-22 Veran Medical Technologies, Inc. Systems, methods and devices for forming respiratory-gated point cloud for four dimensional soft tissue navigation
JP6219396B2 (en) * 2012-10-12 2017-10-25 インテュイティブ サージカル オペレーションズ, インコーポレイテッド Positioning of medical devices in bifurcated anatomical structures
DE102012220115A1 (en) * 2012-11-05 2014-05-22 Fraunhofer-Gesellschaft zur Förderung der angewandten Forschung e.V. Imaging system, imaging device operating system and imaging method
US11823499B2 (en) * 2012-11-14 2023-11-21 Golan Weiss Methods and systems for enrollment and authentication
JP6370038B2 (en) 2013-02-07 2018-08-08 キヤノン株式会社 Position and orientation measurement apparatus and method
US9057600B2 (en) 2013-03-13 2015-06-16 Hansen Medical, Inc. Reducing incremental measurement sensor error
US9629595B2 (en) 2013-03-15 2017-04-25 Hansen Medical, Inc. Systems and methods for localizing, tracking and/or controlling medical instruments
US9271663B2 (en) 2013-03-15 2016-03-01 Hansen Medical, Inc. Flexible instrument localization from both remote and elongation sensors
US9014851B2 (en) 2013-03-15 2015-04-21 Hansen Medical, Inc. Systems and methods for tracking robotically controlled medical instruments
JP6138566B2 (en) * 2013-04-24 2017-05-31 川崎重工業株式会社 Component mounting work support system and component mounting method
US11020016B2 (en) 2013-05-30 2021-06-01 Auris Health, Inc. System and method for displaying anatomy and devices on a movable display
CN105074728B (en) 2013-08-09 2019-06-25 堃博生物科技(上海)有限公司 Chest fluoroscopic image and corresponding rib cage and vertebra 3-dimensional image Registration of Measuring Data
US20150305650A1 (en) 2014-04-23 2015-10-29 Mark Hunter Apparatuses and methods for endobronchial navigation to and confirmation of the location of a target tissue and percutaneous interception of the target tissue
US20150305612A1 (en) 2014-04-23 2015-10-29 Mark Hunter Apparatuses and methods for registering a real-time image feed from an imaging device to a steerable catheter
JP6722652B2 (en) * 2014-07-28 2020-07-15 インテュイティブ サージカル オペレーションズ, インコーポレイテッド System and method for intraoperative segmentation
DE102015202286A1 (en) 2015-02-10 2016-08-11 Siemens Healthcare Gmbh Method for producing a production model for a medical implant
KR101835434B1 (en) 2015-07-08 2018-03-09 고려대학교 산학협력단 Method and Apparatus for generating a protection image, Method for mapping between image pixel and depth value
US10674982B2 (en) * 2015-08-06 2020-06-09 Covidien Lp System and method for local three dimensional volume reconstruction using a standard fluoroscope
EP3349649B1 (en) 2015-09-18 2022-03-09 Auris Health, Inc. Navigation of tubular networks
US10143526B2 (en) 2015-11-30 2018-12-04 Auris Health, Inc. Robot-assisted driving systems and methods
US10244926B2 (en) 2016-12-28 2019-04-02 Auris Health, Inc. Detecting endolumenal buckling of flexible instruments
CN108990412B (en) 2017-03-31 2022-03-22 奥瑞斯健康公司 Robot system for cavity network navigation compensating physiological noise
US11129673B2 (en) 2017-05-05 2021-09-28 Uptake Medical Technology Inc. Extra-airway vapor ablation for treating airway constriction in patients with asthma and COPD
US10022192B1 (en) * 2017-06-23 2018-07-17 Auris Health, Inc. Automatically-initialized robotic systems for navigation of luminal networks
US11395703B2 (en) 2017-06-28 2022-07-26 Auris Health, Inc. Electromagnetic distortion detection
JP7317723B2 (en) 2017-06-28 2023-07-31 オーリス ヘルス インコーポレイテッド Electromagnetic field distortion detection
US11344364B2 (en) 2017-09-07 2022-05-31 Uptake Medical Technology Inc. Screening method for a target nerve to ablate for the treatment of inflammatory lung disease
US11350988B2 (en) 2017-09-11 2022-06-07 Uptake Medical Technology Inc. Bronchoscopic multimodality lung tumor treatment
US10555778B2 (en) 2017-10-13 2020-02-11 Auris Health, Inc. Image-based branch detection and mapping for navigation
US11058493B2 (en) 2017-10-13 2021-07-13 Auris Health, Inc. Robotic system configured for navigation path tracing
US11419658B2 (en) 2017-11-06 2022-08-23 Uptake Medical Technology Inc. Method for treating emphysema with condensable thermal vapor
KR20200100613A (en) 2017-12-14 2020-08-26 아우리스 헬스, 인코포레이티드 System and method for estimating instrument position
CN110809453B (en) 2017-12-18 2023-06-06 奥瑞斯健康公司 Method and system for instrument tracking and navigation within a luminal network
EP3749239A4 (en) 2018-02-05 2021-11-03 Broncus Medical Inc. Image-guided lung tumor planning and ablation system
WO2019191143A1 (en) 2018-03-28 2019-10-03 Auris Health, Inc. Systems and methods for displaying estimated location of instrument
WO2019191144A1 (en) 2018-03-28 2019-10-03 Auris Health, Inc. Systems and methods for registration of location sensors
WO2019231895A1 (en) 2018-05-30 2019-12-05 Auris Health, Inc. Systems and methods for location sensor-based branch prediction
EP3801348A4 (en) 2018-05-31 2022-07-06 Auris Health, Inc. Image-based airway analysis and mapping
WO2019231990A1 (en) 2018-05-31 2019-12-05 Auris Health, Inc. Robotic systems and methods for navigation of luminal network that detect physiological noise
US10898286B2 (en) 2018-05-31 2021-01-26 Auris Health, Inc. Path-based navigation of tubular networks
WO2020015836A1 (en) * 2018-07-20 2020-01-23 Brainlab Ag Method for automatic detection of instrument orientation for robotic surgery
US11653927B2 (en) 2019-02-18 2023-05-23 Uptake Medical Technology Inc. Vapor ablation treatment of obstructive lung disease
US11147633B2 (en) 2019-08-30 2021-10-19 Auris Health, Inc. Instrument image reliability systems and methods
WO2021038469A1 (en) 2019-08-30 2021-03-04 Auris Health, Inc. Systems and methods for weight-based registration of location sensors
JP2022546136A (en) 2019-09-03 2022-11-02 オーリス ヘルス インコーポレイテッド Electromagnetic distortion detection and compensation
US11660147B2 (en) 2019-12-31 2023-05-30 Auris Health, Inc. Alignment techniques for percutaneous access
US11602372B2 (en) 2019-12-31 2023-03-14 Auris Health, Inc. Alignment interfaces for percutaneous access
EP4084721A4 (en) 2019-12-31 2024-01-03 Auris Health Inc Anatomical feature identification and targeting

Citations (58)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4791934A (en) * 1986-08-07 1988-12-20 Picker International, Inc. Computer tomography assisted stereotactic surgery system and method
US5740802A (en) * 1993-04-20 1998-04-21 General Electric Company Computer graphic and live video system for enhancing visualization of body structures during surgery
US5748767A (en) * 1988-02-01 1998-05-05 Faro Technology, Inc. Computer-aided surgery apparatus
US5765561A (en) * 1994-10-07 1998-06-16 Medical Media Systems Video-based surgical targeting system
US5769640A (en) * 1992-12-02 1998-06-23 Cybernet Systems Corporation Method and system for simulating medical procedures including virtual reality and control method and system for use therein
US5776050A (en) * 1995-07-24 1998-07-07 Medical Media Systems Anatomical visualization system
US5782762A (en) * 1994-10-27 1998-07-21 Wake Forest University Method and system for producing interactive, three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US5792147A (en) * 1994-03-17 1998-08-11 Roke Manor Research Ltd. Video-based systems for computer assisted surgery and localisation
US5830145A (en) * 1996-09-20 1998-11-03 Cardiovascular Imaging Systems, Inc. Enhanced accuracy of three-dimensional intraluminal ultrasound (ILUS) image reconstruction
US5891034A (en) * 1990-10-19 1999-04-06 St. Louis University System for indicating the position of a surgical probe within a head on an image of the head
US5901199A (en) * 1996-07-11 1999-05-04 The Board Of Trustees Of The Leland Stanford Junior University High-speed inter-modality image registration via iterative feature matching
US5920319A (en) * 1994-10-27 1999-07-06 Wake Forest University Automatic analysis in virtual endoscopy
US5963612A (en) * 1997-12-31 1999-10-05 Siemens Corporation Research, Inc. Apparatus for C-arm calibration for 3D reconstruction in an imaging system utilizing planar transformation
US5971767A (en) * 1996-09-16 1999-10-26 The Research Foundation Of State University Of New York System and method for performing a three-dimensional virtual examination
US5999840A (en) * 1994-09-01 1999-12-07 Massachusetts Institute Of Technology System and method of registration of three-dimensional data sets
US6006126A (en) * 1991-01-28 1999-12-21 Cosman; Eric R. System and method for stereotactic registration of image scan data
US6016439A (en) * 1996-10-15 2000-01-18 Biosense, Inc. Method and apparatus for synthetic viewpoint imaging
US6078701A (en) * 1997-08-01 2000-06-20 Sarnoff Corporation Method and apparatus for performing local to global multiframe alignment to construct mosaic images
US6190395B1 (en) * 1999-04-22 2001-02-20 Surgical Navigation Technologies, Inc. Image guided universal instrument adapter and method for use with computer-assisted image guided surgery
US6201543B1 (en) * 1997-12-17 2001-03-13 Siemens Corporate Research, Inc. Framework for segmentation of cylindrical structures using two dimensional hybrid models
US6236743B1 (en) * 1995-09-15 2001-05-22 Greg Pratt Three-dimensional digitizing system and method
US6311116B1 (en) * 1999-06-15 2001-10-30 Soo Sung Lee Apparatus and method of preventing sudden acceleration of vehicle
US20010035871A1 (en) * 2000-03-30 2001-11-01 Johannes Bieger System and method for generating an image
US6334847B1 (en) * 1996-11-29 2002-01-01 Life Imaging Systems Inc. Enhanced image processing for a three-dimensional imaging system
US6343936B1 (en) * 1996-09-16 2002-02-05 The Research Foundation Of State University Of New York System and method for performing a three-dimensional virtual examination, navigation and visualization
US6351573B1 (en) * 1994-01-28 2002-02-26 Schneider Medical Technologies, Inc. Imaging device and method
US6442417B1 (en) * 1999-11-29 2002-08-27 The Board Of Trustees Of The Leland Stanford Junior University Method and apparatus for transforming view orientations in image-guided surgery
US6470207B1 (en) * 1999-03-23 2002-10-22 Surgical Navigation Technologies, Inc. Navigational guidance via computer-assisted fluoroscopic imaging
US6491702B2 (en) * 1992-04-21 2002-12-10 Sofamor Danek Holdings, Inc. Apparatus and method for photogrammetric surgical localization
US6514082B2 (en) * 1996-09-16 2003-02-04 The Research Foundation Of State University Of New York System and method for performing a three-dimensional examination with collapse correction
US6535756B1 (en) * 2000-04-07 2003-03-18 Surgical Navigation Technologies, Inc. Trajectory storage apparatus and method for surgical navigation system
US6546279B1 (en) * 2001-10-12 2003-04-08 University Of Florida Computer controlled guidance of a biopsy needle
US6593884B1 (en) * 1998-08-02 2003-07-15 Super Dimension Ltd. Intrabody navigation system for medical applications
US20030152897A1 (en) * 2001-12-20 2003-08-14 Bernhard Geiger Automatic navigation for virtual endoscopy
WO2003096307A1 (en) * 2002-05-10 2003-11-20 Haptica Limited 'A surgical training simulator'
US20030216631A1 (en) * 2002-04-03 2003-11-20 Isabelle Bloch Registration of thoracic and abdominal imaging modalities
US6674879B1 (en) * 1998-03-30 2004-01-06 Echovision, Inc. Echocardiography workstation
US6690960B2 (en) * 2000-12-21 2004-02-10 David T. Chen Video-based surgical targeting system
US6694163B1 (en) * 1994-10-27 2004-02-17 Wake Forest University Health Sciences Method and system for producing interactive, three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US6771262B2 (en) * 1998-11-25 2004-08-03 Siemens Corporate Research, Inc. System and method for volume rendering-based segmentation
US6785410B2 (en) * 1999-08-09 2004-08-31 Wake Forest University Health Sciences Image reporting method and system
US20040209234A1 (en) * 2003-01-30 2004-10-21 Bernhard Geiger Method and apparatus for automatic local path planning for virtual colonoscopy
US6816607B2 (en) * 2001-05-16 2004-11-09 Siemens Corporate Research, Inc. System for modeling static and dynamic three dimensional anatomical structures by 3-D models
US6819785B1 (en) * 1999-08-09 2004-11-16 Wake Forest University Health Sciences Image reporting method and system
US20040252870A1 (en) * 2000-04-11 2004-12-16 Reeves Anthony P. System and method for three-dimensional image rendering and analysis
US20050027187A1 (en) * 2003-07-23 2005-02-03 Karl Barth Process for the coupled display of intra-operative and interactively and iteratively re-registered pre-operative images in medical imaging
US20050033162A1 (en) * 1999-04-14 2005-02-10 Garibaldi Jeffrey M. Method and apparatus for magnetically controlling endoscopes in body lumens and cavities
US6859203B2 (en) * 2002-05-15 2005-02-22 Koninklijke Philips Electronics N.V. Sweeping real-time single point fiber
US20050078858A1 (en) * 2003-10-10 2005-04-14 The Government Of The United States Of America Determination of feature boundaries in a digital representation of an anatomical structure
US20050096526A1 (en) * 2003-10-08 2005-05-05 Siemens Aktiengesellschaft Endoscopy device comprising an endoscopy capsule or an endoscopy head with an image recording device, and imaging method for such an endoscopy device
US6928314B1 (en) * 1998-01-23 2005-08-09 Mayo Foundation For Medical Education And Research System for two-dimensional and three-dimensional imaging of tubular structures in the human body
US6947584B1 (en) * 1998-08-25 2005-09-20 General Electric Company Volume imaging system
US20050272999A1 (en) * 2004-06-07 2005-12-08 Lutz Guendel Method of virtual endoscopy for medical 3D image display and processing, computed tomograph, workstation and computer program product
US6980682B1 (en) * 2000-11-22 2005-12-27 Ge Medical Systems Group, Llc Method and apparatus for extracting a left ventricular endocardium from MR cardiac images
US7019745B2 (en) * 2001-03-28 2006-03-28 Hitachi Medical Corporation Three-dimensional image display device
US20060084860A1 (en) * 2004-10-18 2006-04-20 Bernhard Geiger Method and system for virtual endoscopy with guidance for biopsy
US7343036B2 (en) * 2003-04-22 2008-03-11 Siemens Aktiengesellschaft Imaging method for a capsule-type endoscope unit
US20080262297A1 (en) * 2004-04-26 2008-10-23 Super Dimension Ltd. System and Method for Image-Based Alignment of an Endoscope

Family Cites Families (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
KR100426396B1 (en) 2000-11-28 2004-04-08 김종찬 Virtual reality endoscopy method using 3D image processing method
US6963613B2 (en) * 2002-04-01 2005-11-08 Broadcom Corporation Method of communicating between modules in a decoding system
WO2006076789A1 (en) 2005-01-24 2006-07-27 Claron Technology Inc. A bronchoscopy navigation system and method

Patent Citations (68)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4791934A (en) * 1986-08-07 1988-12-20 Picker International, Inc. Computer tomography assisted stereotactic surgery system and method
US5748767A (en) * 1988-02-01 1998-05-05 Faro Technology, Inc. Computer-aided surgery apparatus
US5891034A (en) * 1990-10-19 1999-04-06 St. Louis University System for indicating the position of a surgical probe within a head on an image of the head
US6006126A (en) * 1991-01-28 1999-12-21 Cosman; Eric R. System and method for stereotactic registration of image scan data
US6491702B2 (en) * 1992-04-21 2002-12-10 Sofamor Danek Holdings, Inc. Apparatus and method for photogrammetric surgical localization
US5769640A (en) * 1992-12-02 1998-06-23 Cybernet Systems Corporation Method and system for simulating medical procedures including virtual reality and control method and system for use therein
US5740802A (en) * 1993-04-20 1998-04-21 General Electric Company Computer graphic and live video system for enhancing visualization of body structures during surgery
US6351573B1 (en) * 1994-01-28 2002-02-26 Schneider Medical Technologies, Inc. Imaging device and method
US5792147A (en) * 1994-03-17 1998-08-11 Roke Manor Research Ltd. Video-based systems for computer assisted surgery and localisation
US5999840A (en) * 1994-09-01 1999-12-07 Massachusetts Institute Of Technology System and method of registration of three-dimensional data sets
US5765561A (en) * 1994-10-07 1998-06-16 Medical Media Systems Video-based surgical targeting system
US6675032B2 (en) * 1994-10-07 2004-01-06 Medical Media Systems Video-based surgical targeting system
US5782762A (en) * 1994-10-27 1998-07-21 Wake Forest University Method and system for producing interactive, three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US6366800B1 (en) * 1994-10-27 2002-04-02 Wake Forest University Automatic analysis in virtual endoscopy
US6272366B1 (en) * 1994-10-27 2001-08-07 Wake Forest University Method and system for producing interactive three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US6909913B2 (en) * 1994-10-27 2005-06-21 Wake Forest University Health Sciences Method and system for producing interactive three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US5920319A (en) * 1994-10-27 1999-07-06 Wake Forest University Automatic analysis in virtual endoscopy
US6694163B1 (en) * 1994-10-27 2004-02-17 Wake Forest University Health Sciences Method and system for producing interactive, three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US6083162A (en) * 1994-10-27 2000-07-04 Wake Forest University Method and system for producing interactive, three-dimensional renderings of selected body organs having hollow lumens to enable simulated movement through the lumen
US6241657B1 (en) * 1995-07-24 2001-06-05 Medical Media Systems Anatomical visualization system
US5776050A (en) * 1995-07-24 1998-07-07 Medical Media Systems Anatomical visualization system
US6236743B1 (en) * 1995-09-15 2001-05-22 Greg Pratt Three-dimensional digitizing system and method
US5901199A (en) * 1996-07-11 1999-05-04 The Board Of Trustees Of The Leland Stanford Junior University High-speed inter-modality image registration via iterative feature matching
US6514082B2 (en) * 1996-09-16 2003-02-04 The Research Foundation Of State University Of New York System and method for performing a three-dimensional examination with collapse correction
US6343936B1 (en) * 1996-09-16 2002-02-05 The Research Foundation Of State University Of New York System and method for performing a three-dimensional virtual examination, navigation and visualization
US5971767A (en) * 1996-09-16 1999-10-26 The Research Foundation Of State University Of New York System and method for performing a three-dimensional virtual examination
US5830145A (en) * 1996-09-20 1998-11-03 Cardiovascular Imaging Systems, Inc. Enhanced accuracy of three-dimensional intraluminal ultrasound (ILUS) image reconstruction
US6016439A (en) * 1996-10-15 2000-01-18 Biosense, Inc. Method and apparatus for synthetic viewpoint imaging
US6334847B1 (en) * 1996-11-29 2002-01-01 Life Imaging Systems Inc. Enhanced image processing for a three-dimensional imaging system
US6078701A (en) * 1997-08-01 2000-06-20 Sarnoff Corporation Method and apparatus for performing local to global multiframe alignment to construct mosaic images
US6201543B1 (en) * 1997-12-17 2001-03-13 Siemens Corporate Research, Inc. Framework for segmentation of cylindrical structures using two dimensional hybrid models
US5963612A (en) * 1997-12-31 1999-10-05 Siemens Corporation Research, Inc. Apparatus for C-arm calibration for 3D reconstruction in an imaging system utilizing planar transformation
US5963613A (en) * 1997-12-31 1999-10-05 Siemens Corporate Research, Inc. C-arm calibration method for 3D reconstruction in an imaging system
US6049582A (en) * 1997-12-31 2000-04-11 Siemens Corporate Research, Inc. C-arm calibration method for 3D reconstruction
US6928314B1 (en) * 1998-01-23 2005-08-09 Mayo Foundation For Medical Education And Research System for two-dimensional and three-dimensional imaging of tubular structures in the human body
US6674879B1 (en) * 1998-03-30 2004-01-06 Echovision, Inc. Echocardiography workstation
US6593884B1 (en) * 1998-08-02 2003-07-15 Super Dimension Ltd. Intrabody navigation system for medical applications
US6947584B1 (en) * 1998-08-25 2005-09-20 General Electric Company Volume imaging system
US6771262B2 (en) * 1998-11-25 2004-08-03 Siemens Corporate Research, Inc. System and method for volume rendering-based segmentation
US6470207B1 (en) * 1999-03-23 2002-10-22 Surgical Navigation Technologies, Inc. Navigational guidance via computer-assisted fluoroscopic imaging
US20050033162A1 (en) * 1999-04-14 2005-02-10 Garibaldi Jeffrey M. Method and apparatus for magnetically controlling endoscopes in body lumens and cavities
US6190395B1 (en) * 1999-04-22 2001-02-20 Surgical Navigation Technologies, Inc. Image guided universal instrument adapter and method for use with computer-assisted image guided surgery
US6311116B1 (en) * 1999-06-15 2001-10-30 Soo Sung Lee Apparatus and method of preventing sudden acceleration of vehicle
US6819785B1 (en) * 1999-08-09 2004-11-16 Wake Forest University Health Sciences Image reporting method and system
US6785410B2 (en) * 1999-08-09 2004-08-31 Wake Forest University Health Sciences Image reporting method and system
US6442417B1 (en) * 1999-11-29 2002-08-27 The Board Of Trustees Of The Leland Stanford Junior University Method and apparatus for transforming view orientations in image-guided surgery
US20010035871A1 (en) * 2000-03-30 2001-11-01 Johannes Bieger System and method for generating an image
US6535756B1 (en) * 2000-04-07 2003-03-18 Surgical Navigation Technologies, Inc. Trajectory storage apparatus and method for surgical navigation system
US6920347B2 (en) * 2000-04-07 2005-07-19 Surgical Navigation Technologies, Inc. Trajectory storage apparatus and method for surgical navigation systems
US20040252870A1 (en) * 2000-04-11 2004-12-16 Reeves Anthony P. System and method for three-dimensional image rendering and analysis
US6980682B1 (en) * 2000-11-22 2005-12-27 Ge Medical Systems Group, Llc Method and apparatus for extracting a left ventricular endocardium from MR cardiac images
US6690960B2 (en) * 2000-12-21 2004-02-10 David T. Chen Video-based surgical targeting system
US7019745B2 (en) * 2001-03-28 2006-03-28 Hitachi Medical Corporation Three-dimensional image display device
US6816607B2 (en) * 2001-05-16 2004-11-09 Siemens Corporate Research, Inc. System for modeling static and dynamic three dimensional anatomical structures by 3-D models
US6546279B1 (en) * 2001-10-12 2003-04-08 University Of Florida Computer controlled guidance of a biopsy needle
US20030152897A1 (en) * 2001-12-20 2003-08-14 Bernhard Geiger Automatic navigation for virtual endoscopy
US20030216631A1 (en) * 2002-04-03 2003-11-20 Isabelle Bloch Registration of thoracic and abdominal imaging modalities
US20050084833A1 (en) * 2002-05-10 2005-04-21 Gerard Lacey Surgical training simulator
WO2003096307A1 (en) * 2002-05-10 2003-11-20 Haptica Limited 'A surgical training simulator'
US6859203B2 (en) * 2002-05-15 2005-02-22 Koninklijke Philips Electronics N.V. Sweeping real-time single point fiber
US20040209234A1 (en) * 2003-01-30 2004-10-21 Bernhard Geiger Method and apparatus for automatic local path planning for virtual colonoscopy
US7343036B2 (en) * 2003-04-22 2008-03-11 Siemens Aktiengesellschaft Imaging method for a capsule-type endoscope unit
US20050027187A1 (en) * 2003-07-23 2005-02-03 Karl Barth Process for the coupled display of intra-operative and interactively and iteratively re-registered pre-operative images in medical imaging
US20050096526A1 (en) * 2003-10-08 2005-05-05 Siemens Aktiengesellschaft Endoscopy device comprising an endoscopy capsule or an endoscopy head with an image recording device, and imaging method for such an endoscopy device
US20050078858A1 (en) * 2003-10-10 2005-04-14 The Government Of The United States Of America Determination of feature boundaries in a digital representation of an anatomical structure
US20080262297A1 (en) * 2004-04-26 2008-10-23 Super Dimension Ltd. System and Method for Image-Based Alignment of an Endoscope
US20050272999A1 (en) * 2004-06-07 2005-12-08 Lutz Guendel Method of virtual endoscopy for medical 3D image display and processing, computed tomograph, workstation and computer program product
US20060084860A1 (en) * 2004-10-18 2006-04-20 Bernhard Geiger Method and system for virtual endoscopy with guidance for biopsy

Cited By (17)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US8204576B2 (en) * 2007-06-06 2012-06-19 Olympus Medical Systems Corp. Medical guiding system
US20080306379A1 (en) * 2007-06-06 2008-12-11 Olympus Medical Systems Corp. Medical guiding system
US10667679B2 (en) * 2010-01-28 2020-06-02 The Penn State Research Foundation Image-based global registration system and method applicable to bronchoscopy guidance
US20180220883A1 (en) * 2010-01-28 2018-08-09 The Penn State Research Foundation Image-based global registration system and method applicable to bronchoscopy guidance
US20120203067A1 (en) * 2011-02-04 2012-08-09 The Penn State Research Foundation Method and device for determining the location of an endoscope
US20140226886A1 (en) * 2011-10-26 2014-08-14 Koh Young Technology Inc. Registration method of images for surgery
US9105092B2 (en) * 2011-10-26 2015-08-11 Koh Young Technology Inc. Registration method of images for surgery
US11219385B2 (en) 2012-08-14 2022-01-11 Intuitive Surgical Operations, Inc. Systems and methods for registration of multiple vision systems
US10278615B2 (en) 2012-08-14 2019-05-07 Intuitive Surgical Operations, Inc. Systems and methods for registration of multiple vision systems
US11896364B2 (en) 2012-08-14 2024-02-13 Intuitive Surgical Operations, Inc. Systems and methods for registration of multiple vision systems
US9811913B2 (en) 2015-05-13 2017-11-07 Siemens Healthcare Gmbh Method for 2D/3D registration, computational apparatus, and computer program
US11361407B2 (en) * 2017-04-09 2022-06-14 Indiana University Research And Technology Corporation Motion correction systems and methods for improving medical image data
US11529038B2 (en) * 2018-10-02 2022-12-20 Elements Endoscopy, Inc. Endoscope with inertial measurement units and / or haptic input controls
CN109978911A (en) * 2019-02-22 2019-07-05 青岛小鸟看看科技有限公司 A kind of characteristics of image point-tracking method and camera
US20200375546A1 (en) * 2019-06-03 2020-12-03 General Electric Company Machine-guided imaging techniques
US10881353B2 (en) * 2019-06-03 2021-01-05 General Electric Company Machine-guided imaging techniques
WO2022208253A1 (en) * 2021-03-31 2022-10-06 Auris Health, Inc. Vision-based 6dof camera pose estimation in bronchoscopy

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