US20010014183A1 - Image processing system with image cropping and skew correction - Google Patents
Image processing system with image cropping and skew correction Download PDFInfo
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- US20010014183A1 US20010014183A1 US09/057,847 US5784798A US2001014183A1 US 20010014183 A1 US20010014183 A1 US 20010014183A1 US 5784798 A US5784798 A US 5784798A US 2001014183 A1 US2001014183 A1 US 2001014183A1
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N1/00—Scanning, transmission or reproduction of documents or the like, e.g. facsimile transmission; Details thereof
- H04N1/387—Composing, repositioning or otherwise geometrically modifying originals
- H04N1/3877—Image rotation
- H04N1/3878—Skew detection or correction
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06V—IMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
- G06V10/00—Arrangements for image or video recognition or understanding
- G06V10/20—Image preprocessing
- G06V10/24—Aligning, centring, orientation detection or correction of the image
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N1/00—Scanning, transmission or reproduction of documents or the like, e.g. facsimile transmission; Details thereof
- H04N1/38—Circuits or arrangements for blanking or otherwise eliminating unwanted parts of pictures
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N1/00—Scanning, transmission or reproduction of documents or the like, e.g. facsimile transmission; Details thereof
- H04N1/387—Composing, repositioning or otherwise geometrically modifying originals
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N1/00—Scanning, transmission or reproduction of documents or the like, e.g. facsimile transmission; Details thereof
- H04N1/387—Composing, repositioning or otherwise geometrically modifying originals
- H04N1/3872—Repositioning or masking
- H04N1/3873—Repositioning or masking defined only by a limited number of coordinate points or parameters, e.g. corners, centre; for trimming
Definitions
- FIG. 2 shows a computer system that implements an image processing system
- FIGS. 9 B- 9 C and 10 show flow chart diagrams of the automatic deskew and image cropping system of FIGS. 3 and 4;
- the automatic deskew and cropping system 322 calculates the skew angle ⁇ which is then sent to the imaging program 326 (FIG. 3), along with cropping boundaries computed from the skew angle ⁇ and the pixels 518 , 520 , 522 , 524 , 526 .
- the imaging program 326 then corrects the skew of the document image 502 in accordance with the skew angle ⁇ received from the automatic deskew and cropping system 322 and eliminates all of the background 504 in the scan image 500 in accordance with the six document image pixels 518 - 526 .
- the imaging program 326 does this in a known way, which will not be described in more detail below.
- the processed document image 600 is shown in FIG. 6.
- the automatic deskew and cropping system 322 interfaces with the scan control program 324 , the automatic deskew and cropping system 322 receives one scan line of pixels from the scan control program 324 as soon as the scan control program 324 controls the scanner 218 to finish scanning one such scan line. This causes the automatic deskew and cropping system 322 to operate in parallel with the operation of the scan control program 324 . As a result, the automatic deskew and cropping system 322 can determine the skew angle and boundary information of the document image of the document 310 as soon as the scan control program 324 finishes scanning the document 310 .
- FIGS. 9B and 9C show the process of the automatic deskew and cropping system 322 (FIGS. 3 and 4) in developing the edge segments and the six boundary pixels of the document image.
- FIG. 10 shows the process of the system 322 of FIGS. 3 and 4 in detecting the skew angle of the document image based on the edge segments developed by the process of FIGS. 9B and 9C.
- FIG. 11 shows how edge segments are developed in a rectangular document image.
- FIG. 12 shows how edge segments are developed in a circular or oval document image.
- FIGS. 9B, 9C and 10 will be described in more detail below, also in connection with FIGS. 11 and 12.
- step 926 is performed, at which the first document image pixel (i.e., pixel c 1 ) where a neighborhood index, such as row r and column c 1 having a color different from that of the corresponding background pixel is located.
- row r and column c 1 indicates a lower corner.
- this row is arbitrary and any row could be used for the neighborhood index, as long as it is the same all of time.
Abstract
Description
- 1. Field of the Invention
- The present invention pertains to image processing systems. More particularly, this invention relates to an image processing system with (1) skew correction that does not require human intervention or the presence of text or skew detection information on the original document, and (2) image cropping that is done regardless of the shape of the image.
- 2. Description of the Related Art
- It has been known that when a document (i.e., the original physical object, such as photo or text document) is scanned by a scanner, a digital image of the original document is typically generated. The digital image of the original document is, however, often found to be skewed (rotated) inside the entire scan image (i.e., inside the entire digital image obtained from the scanner). As is known, the scan image typically includes the image of the document as well as background information. A skew or inclination of the document image within the scan image is particularly likely to occur when the scanner uses an automatic document feed mechanism to feed the original document for scanning. In addition, when the size of the original document is relatively small in comparison to the scan region of the scanner, the scan image may contain considerable amount of background information.
- For instance, some scanning devices are automatic sheet fed scanners with stationery charge coupled devices (CCD's). These scanning devices feed the document past the CCD for scanning. The document must be grabbed by a set of rollers for scanning. This mechanism can sometimes scratch the document. Also, small documents may not be securely grabbed or reliably sensed by the mechanism. In addition, only a single document at a time can be fed in the scanner. As a result, document carriers are used to overcome these problems. A document carrier is usually a transparent envelope having a white backdrop. The document or documents of interest are inserted within the envelope for scanning. The document carrier protects the scanned document from scratches and also provides the rollers with a larger width original to grab, thereby accomplishing successful feeding of the document through the scanner.
- However, one disadvantage of using a document carrier is that the document carrier also becomes part of the scanned data. For example, if the carrier color does not exactly match the color of the scanner background, edges of the document carrier will be contained in the scanned data. This spurious data will cause the digital image to contain unwanted extraneous information. FIG. 1 illustrates a
scan image 100 that exhibits these problems. - As can be seen from FIG. 1, the
scan image 100 contains adocument image 110 of an original document. The remaining area of thescan image 100 isbackground 120, which typically has a predetermined pixel pattern, andextraneous information 140, which typically has known characteristics. Thebackground 120 can be caused by the scanner background while theextraneous information 140 can be caused by a document carrier. Thedocument image 110 is skewed inside thescan image 100 and thebackground 120 is a considerable fraction of thescan image 100. When thescan image 100 is displayed on a display or printed by a printer, thedocument image 110 typically has a relatively unpleasant and poor visual quality. In addition, the skewed image may also cause errors when the image data is further processed by other software programs, such as optical character recognition programs. - Techniques have been developed to try to detect and correct the skew problem. For example, U.S. Pat. No. 4,941,189, entitled OPTICAL CHARACTER READER WITH SKEW RECOGNITION and issued on Jul. 10,1990, describes a skew correction technique that searches for text characters along a scan line. As another example, U.S. Pat. No. 5,452,374, entitled SKEW DETECTION AND CORRECTION OF A DOCUMENT IMAGE REPRESENTATION and issued on Sep. 19, 1995, describes another technique that segments the scan image into text and non-text regions and then determines the skew information based on the resulting segmentation.
- These techniques, however, require the original document to contain at least some text. The techniques then rely on the detection of one or more lines of the text in the document. With the advent of inexpensive photo scanners and multimedia personal computers, scanners are nowadays used to scan not only text documents, but photographs and other image documents as well. The photographs, however, typically do not contain any text data. This thus causes the skew detection and correction techniques to be inapplicable to the scanned photo images. In addition, because photographs can have a variety of sizes and shapes, it is typically difficult to trim the background information from the scanned image of a photograph.
- Another technique has been proposed that detects the skew information of a scanned image without requiring the presence of text in the scanned document. One such technique is described in U.S. Pat. No. 5,093,653, entitled IMAGE PROCESSING SYSTEM HAVING SKEW CORRECTION MEANS, and issued on Mar. 3, 1992. However, this technique requires human intervention.
- Described below is a system and method for automatically determining in a scanned document image the presence of unwanted extraneous information caused by an extraneous device, for example, a document carrier and scanner background information. Once the presence of this information is determined, the system and method of the present invention can compute, for instance, skew and crop statistics. From this, the image can be automatically deskewed and cropped appropriately without the background and extraneous information (such as marks from the document carrier). The system and method accomplishes this by first determining the presence of unwanted extraneous and background information and then appropriately processing the document image. The extraneous information is ignored during deskew and crop computations. Also, the scanner background and the extraneous information are prevented from being included with the final digital representation of the image.
- Specifically, scanner background information and any extraneous information, such as edges created by the document carrier, are ignored when processing information is computed, such as skew and crop statistics, while image edges are retained, such as document edges of an image or text pages. Thus, the system and method of the present invention optimizes automatic cropping and deskewing results of document images scanned by general purpose scanning devices that are used with or without document carriers.
- Also, the system and method described below determines a skew angle of the document image without requiring text in the document or human intervention. This feature is accomplished by determining an edge of the document image within a scan image and using that edge to determine the skew angle of the document image. The edge can be determined by locating the first or last document image pixel of each scan line of pixels in the scan image that belongs to the document image (i.e., the edge pixel of the document image along that scan line). This is accomplished by comparing a scan line of pixels with a predetermined scan line of background pixels or alternatively by comparing a neighborhood around a scan line with predetermined background pixels. The skew angle of the document image is then determined by computing the slope of the detected edge in the scan image.
- In addition, the system and method described below can determine the boundary of the document image. This feature is accomplished by locating (1) a first document image pixel and a last document image pixel for a first scan line of the document image in the scan image, (2) a first document image pixel and a last document image pixel of a last scan line of the document image in the scan image, (3) a leftmost document image pixel of the document image in the scan image, and (4) a rightmost document image pixel of the document image in the scan image.
- The present invention is illustrated by way of example and not by way of limitation in the Figures of the accompanying drawings, in which like references indicate similar elements, and in which:
- FIG. 1 shows a skewed image of a document in a scan;
- FIG. 2 shows a computer system that implements an image processing system;
- FIG. 3 shows the image processing system implemented by the computer system of FIG. 2, wherein the image processing system includes an automatic deskew and image cropping system in accordance with one embodiment of the present invention;
- FIG. 4 illustrates a different configuration of the automatic deskew and image cropping system in the image processing system of FIG. 3;
- FIG. 5 shows a document image generated by the image processing system of FIG. 3 or4 before being processed by the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIG. 6 shows the document image of FIG. 5 after being processed by the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIG. 7 shows another document image generated by the image processing system of FIG. 3 or4 before being processed by the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIG. 8 shows the document image of FIG. 7 after being processed by the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIG. 9A illustrates a sample user interface for implementing the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIGS.9B-9C and 10 show flow chart diagrams of the automatic deskew and image cropping system of FIGS. 3 and 4;
- FIGS. 11 and 12 illustrate calculation of the skew angle and boundary information of a document image by the automatic deskew and image cropping system of FIGS. 3 and 4 when the document image has rectangular and non-rectangular shapes.
- The present invention is a system and method for automatically determining scanner background information and extraneous information within a digital representation of a scanned document image. The scanner background information is caused by the scanner's background and the extraneous information is caused by an extraneous device, such as a document carrier. For instance, due to the physical appearance of the document carrier, it can leave marks within the digital representation of the scanned document image. Once the presence of this information is determined, the system and method of the present invention can compute, for instance, skew and crop statistics. From this, the image can be automatically deskewed and cropped appropriately without the background and extraneous information.
- The present invention can be used with general purpose scanning devices for scanning an image as scanned data input. The image can be a photograph, multiple photographs in one scan, text only or mixed documents containing photographs, text, graphics, etc. The present invention parses the scanned data input for determining the presence of scanner background information and extraneous information, which, for example, can be caused by a document carrier. Also, the scanned data input is parsed for determining edges and a skew angle of the image. The parsed data is used to compute skew and crop statistics of the scanned data for cropping and deskewing the image. This ultimately provides an aligned digital representation of the scanned image without unwanted scanner background information and extraneous information. Specifically, the scanner background and any indicia of an extraneous device, such as a document carrier, are ignored when the skew and crop statistics are computed, while image edges are retained, such as document edges of text pages. Thus, the present invention properly crops and deskews images scanned by general purpose scanning devices that are used with or without document carriers.
- One of the features of the present invention is to provide skew correction for a scanned image without requiring the presence of text. Another feature of the present invention is to provide skew correction for a scanned image without requiring human intervention. A further feature of the present invention is to provide image cropping for a scanned image regardless of the size and/or shape of the original. A still further feature of the present invention is to provide skew correction and image cropping for a scanned image in a cost effective manner.
- FIG. 2 illustrates a
computer system 200 that implements an image processing system 320 (shown in FIGS. 3 and 4) within which an automatic deskew and image cropping system 322 (shown in FIGS. 3 and 4) in accordance with one embodiment of the present invention may be implemented. Although FIG. 2 shows some of the basic components of thecomputer system 200, it is neither meant to be limiting nor to exclude other components or combinations of components in the system. Theimage processing system 320 and the automatic deskew andimage cropping system 322 in accordance with the present invention will be described in more detail below, also in conjunction with FIGS. 3 through 12. - In one embodiment, the
computer system 200 can be a personal computer having a scanner, a notebook computer having a scanner, a palmtop computer having a scanner, a workstation having a scanner, or a mainframe computer having a scanner. In another embodiment, thecomputer system 100 can be a scan system that also has some or all of the components of a computer system. - As can be seen from FIG. 2, the
computer system 200 includes abus 202 for transferring data and other information. Thecomputer system 200 also includes aprocessor 204 coupled to thebus 202 for processing data and instructions. Theprocessor 204 can be any known and commercially available processor or microprocessor. Amemory 206 is also provided in thecomputer system 200. Thememory 206 is connected to thebus 202 and typically stores information and instructions to be executed by theprocessor 204. Thememory 206 may also include a frame buffer (not shown in FIG. 2) that stores a frame of bitmap image to be displayed on adisplay 210 of thecomputer system 200. - The
memory 206 can be implemented by various types of memories. For example, thememory 206 can be implemented by a RAM (Random Access Memory) and/or a nonvolatile memory. In addition, thememory 206 can be implemented by a combination of a RAM, a ROM (Read Only Memory), and/or an electrically erasable and programmable nonvolatile memory. - The
computer system 200 also includes amass storage device 208 connected to thebus 202. Themass storage device 208 stores data and other information. In addition, themass storage device 208 stores system and application programs. The programs are executed by theprocessor 204 and need to be downloaded to thememory 206 before being executed by theprocessor 204. - The
display 210 is coupled to thebus 202 for displaying information to a user of thecomputer system 200. A keyboard orkeypad input device 212 is also provided that is connected to thebus 202. An additional input device of thecomputer system 200 is acursor control device 214, such as a mouse, a trackball, a trackpad, or a cursor direction key. Thecursor control device 214 is also connected to thebus 202 for communicating direction information and command selections to theprocessor 326, and for controlling cursor movement on thedisplay 210. Another device which may also be included in thecomputer system 200 is ahard copy device 216. Thehard copy device 216 is used in thecomputer system 200 to print text and/or image information on a medium such as paper, film, or similar types of media. - In addition, the
computer system 200 includes animage scanner 218. Theimage scanner 218 is used to convert an original document (i.e., the original physical document, such as photo or text document) into a digitized image which can be further processed by thecomputer system 200. In one embodiment, theimage scanner 218 is a fax machine-type image scanner that has a scan region of one scan line wide. The length of the scan region is the width of the scan line. In this case, the scan head of theimage scanner 218 simultaneously images the entire scan line. A document feed mechanism is provided to advance the original document after each scan. In another embodiment, theimage scanner 218 is a copier-type image scanner that has a relatively large scan region. For this type of scanner, the original document is placed against the scan window of the scanner and the scan head of the scanner moves in one direction after each scan. - The
computer system 200 also includes otherperipheral devices 220. Theseother devices 220 may include a digital signal processor, a MODEM (modulation/demodulation), and/or a CD-ROM drive. In addition, thecomputer system 200 may function without some of the above described components. For example, thecomputer system 200 may function without thehard copy device 216. - As described above, the
computer system 200 includes the image processing system 320 (shown in FIGS. 3 and 4) which includes the automatic deskew andimage cropping system 322 of the present invention (also shown in FIGS. 3 and 4). In one embodiment, theimage processing system 320 is implemented as a series of software programs that are run by theprocessor 326, which interacts with scan data received from thescanner 218. It will, however, be appreciated that theimage processing system 320 can also be implemented in discrete hardware or firmware. - Similarly, the automatic deskew and
image cropping system 322 alone can be implemented either as a software program run by theprocessor 326 or in the form of discrete hardware or firmware within theimage processing system 320. Theimage processing system 320, as well as the automatic deskew andimage cropping system 322, will be described in more detail below, in the form of software programs. - As can be seen from FIG. 3, the
image processing system 320 includes ascan control program 324 and animaging program 326, in addition to the automatic deskew andimage cropping system 322. All of theprograms 322 through 326 are typically stored in themass storage device 208 of the computer system 200 (FIG. 2). These programs are loaded into thememory 206 from themass storage device 208 before they are executed by theprocessor 204. - The
scan control program 324 interfaces with thescanner 218 and theimaging program 326. The function ofscan control program 324 is to control the scanning operation of thescanner 218 and to receive the scan image of anoriginal document 310 from thescanner 218. As is known, the scan image of a document typically includes the digital image of the document (i.e., the document image) and some background image and extraneous information if an extraneous device, such as a document carrier, is used to aid in scanning the document. Thescan control program 324 can be, for example, a scanner driver program for thescanner 218. Alternatively, thescan control program 324 can be any known scanner program for interfacing thescanner 218 with a user. - As described above, the
scan control program 324 controls thescanner 218 to scan thedocument 310. Theoriginal document 310 can be of different shapes and sizes. For example, thedocument 310 can be of a rectangular shape, a polygon shape, or a circular or oval shape. FIG. 5 shows one example of ascan image 500 of thedocument 310 obtained by thescan control program 324. As can be seen from FIG. 5, thedocument image 502 ofdocument 310 is skewed inside thescan image 500 and has a skew angle α. As can be seen from thescan image 500, the scanneddocument 310 has a rectangular shape. FIG. 7 shows anotherscan image 700 of thedocument 310 obtained by thescan control program 324 when thedocument 310 has an oval shape. Both FIGS. 5 and 7 show considerable background withinscan images - As shown in FIG. 3, the
imaging program 326 is used in theimage processing system 320 to process the scan image (e.g., thescan image original document 310 received from thescan control program 324. Theimaging program 326 typically processes the scan image of theoriginal document 310 so that the scan image can be displayed on thedisplay 210 or printed by thehard copy device 216. The processing functions of theimaging program 326 typically include resampling and interpolation of the scan image. Theimaging program 326 typically includes a device-specific image driver program. For example, theimaging program 326 can include a known display driver program or a known printer driver program. Theimaging program 326 can be any image processing application. - As can be seen from FIG. 3, the automatic deskew and
image cropping system 322 of theimage processing system 320 interfaces with thescan control program 324 and theimaging program 326. The automatic deskew andimage cropping system 322 receives digital data representing the scan image of thedocument 310 from thescan control program 324 and automatically determines the presence of scanner background information and extraneous information caused by an extraneous device, such as a document carrier. For instance, due to the physical appearance of the document carrier, it can leave marks within the digital data representing the scanneddocument image 310. The automatic deskew andimage cropping system 322 ignores the scanner background information and extraneous information and detects the skew angle and boundary of the document image of thedocument 310 within the scan image. This provides correction of the skew of the document image (i.e., deskewed) so that much or all of the scanner background information and the extraneous information of the image can be eliminated. - In the case where a document carrier is used, the document carrier can cause unwanted extraneous information because it becomes part of the scanned data. For example, if the carrier color does not exactly match the color of the scanner background, edges of the document carrier will be contained in the scanned data. The present invention detects and deliberately ignores this spurious data and it is deemed as invalid image data. As a result, the document carrier information does not influence the results of other functions and operations of the automatic deskew and
image cropping system 322, such as the automatic crop and deskew functions (discussed below in detail). - Many different document carrier sizes exist, and the present invention is not limited to any particular size. For illustrative purposes only, two such sizes of document carriers are a full page carrier, which can be approximately 8.5″×11″ (usually for text or mixed documents), and a half page carrier, which can be approximately 8.5″×5.75″ (usually for photos). Typically, document carriers have some known physical characteristic or characteristics or some form of indicia that can be used as a basis to form boundaries within the scanned data. This allows unwanted document carrier information to be distinguished from wanted image data. For instance, the bottom of some document carriers contain a semi-circular notch, which is a known physical characteristic on all document carriers in that class. The semi-circular notch allows a user to more easily insert a document into the document carrier.
- The automatic deskew and
image cropping system 322 is preprogrammed with known physical characteristics of certain extraneous devices of certain classes. Namely, if a particular class of document carriers are known to have semi-circular notches, the automatic deskew andimage cropping system 322 is preprogrammed to indicate that the particular class is associated with semi-circular notches as a known physical characteristic. If the known physical characteristic is found after scanning thedocument image 310, scanned data representing edges of the document carrier are located so that the entire unwanted extraneous information caused by the document carrier is cropped out and discarded. - Also, because the full size document carrier is too long to be fed sideways, only one orientation for scanning exists if the full size document carrier is used. As such, the known physical characteristic, such as the semi-circle, can only be at the bottom or top edges and cannot be at the left or right edges. Hence, the automatic deskew and
image cropping system 322 searches for these known physical characteristics of document carriers, such as semi-circles, and crops out unwanted information appropriately. By discarding the edges of the document carrier, additional functions and operations of the automatic deskew andimage cropping system 322 can be performed more accurately. - The automatic deskew and
image cropping system 322 detects the skew angle of the document image (e.g., thedocument image 502 of FIG. 5) inside the scan image (e.g., thescan image 500 of FIG. 5) by first detecting an edge of the document image and then determining the slope of the edge. This allows the skew angle detection of the document image to be done without requiring the presence of text or special skew detection marks on the document image. This also allows theimaging program 326 to correct the skew of the document image without human intervention. - In addition, the automatic deskew and
image cropping system 322 detects the boundary of the document image (e.g., thedocument image 502 of FIG. 5). There are several ways that the automatic deskew andimage cropping system 322 detects the boundary of the document image. Two sample techniques are discussed in detail below for illustrative purposes only. Each technique can be custom configured for specific implementations. The first sample technique detects the boundary by locating a first and a last document image pixel for the first scan line of the document image, a first and a last document image pixel for the last scan line of the document image, a leftmost document image pixel of the document image, and a rightmost document image pixel of the document image within the scan image. The positioned information of these six pixels is then used to compute the extent (i.e., boundary) of the document image in the scan image after skew correction. This information is then provided to theimaging program 326, allowing theimaging program 326 to trim or crop the scan image to obtain the document image without much or all of the background information. - The automatic deskew and
image cropping system 322 detects the skew angle and boundary information of a document image within a scan image by locating the first and last pixels of each scan line of the document image inside the scan image. The automatic deskew andimage cropping system 322 can accomplish this by comparing each scan line of pixels in the scan image with a predetermined scan line of background pixels to locate the first and last document image pixels. This can alternatively, and preferably, be accomplished by comparing a neighborhood around each scan line of pixels in the scan image with predetermined background pixels to locate the first and last document image pixels. This allows boundary edge segments of the document image to be developed. The automatic deskew andimage cropping system 322 then determines the length of each edge segment of the document image and calculates the skew of the edge segment. If the automatic deskew andimage cropping system 322 determines that an edge segment is not long enough, theprogram 322 does not calculate the skew of that edge segment. - In addition, if the automatic deskew and
image cropping system 322 determines that the document image has multiple skew angles (i.e., the skew of an edge segment in the document image is not equal to that of another edge segment of the document image), theprogram 322 determines that the document image has a non-rectangular shape. When this occurs, the automatic deskew andimage cropping system 322 sets the skew angle of the document image to θ, which is preferably zero, whether the document image is skewed or not. In other words, if the automatic deskew andimage cropping system 322 determines that the document image has a non-rectangular (e.g., circular, oval, or polygonal) shape, theprogram 322 preferably does not detect the skew angle of the document image. Instead, theprogram 322 provides the boundary information of the document image so that much or all of the background can be trimmed or cropped away from the scan image. - Moreover, when the automatic deskew and
image cropping system 322 determines that the detected document image is not of a rectangular shape, theprogram 322 preferably defines the smallest rectangle that contains all of the six boundary pixels and informs theimaging program 326 to take the entire interior of this rectangle as the cropped document image (see, for example, FIG. 8). In this case, not all background information is trimmed off. The operation of automatic deskew andimage cropping system 322 is now described in more detail below, also in conjunction with FIGS. 5-6 when thedocument 310 has a rectangular shape or FIGS. 7-8 when thedocument 310 has a non-rectangular shape. - As can be seen from FIGS. 3 and 5-6, the skew detection and
image cropping program 322 checks thescan image 500 to locate the first and last document image pixels of the first scan line of thedocument image 502. As can be seen from FIG. 5, theprogram 322 learns that the first scan line of thescan image 500 is the first scan line of thedocument image 502. Theprogram 322 then locates the firstdocument image pixel 518 and the lastdocument image pixel 520 of the first scan line of thedocument image 502. As the automatic deskew andcropping system 322 continues checking the first and last document image pixels of other scan lines of thedocument image 502,edge segments document image pixel 521 and rightmostdocument image pixel 522 are located. The first and last document image pixels (i.e., 524 and 526) of the last scan line of thedocument image 502 are also located. As can be seen from FIG. 5, the first document image pixel 524 of the last scan line of thedocument image 502 overlaps the last document image pixel 526 of that scan line. - After the
edge segments document image 502 are developed, the automatic deskew andcropping system 322 calculates the skew angle α which is then sent to the imaging program 326 (FIG. 3), along with cropping boundaries computed from the skew angle α and thepixels - As described above, the automatic deskew and
cropping system 322 of FIG. 3 also detects if the document image is of a rectangular shape when the program calculates the skew angle α of the document image. If theprogram 322 detects that the document image (e.g., thedocument image 702 of FIG. 7) is not of a rectangular shape, then theprogram 322 preferably does not calculate the skew angle of the document image and preferably sets the skew angle to zero. The automatic deskew andcropping system 322 detects whether a document image is rectangular or not by determining if the document image has multiple skew angles. When this occurs, the document image has a non-rectangular shape (e.g., the polygonal shape). In addition, theprogram 322 also detects if the document image has a rectangular shape by detecting if the edge segments of the document image are longer than a predetermined length. Those edge segments shorter than the predetermined length are discarded, and no skew angle is computed for such segments. If all detected segments are discarded, theprogram 322 determines that the document image has a non-rectangular shape (e.g., oval or circular shape) and again does not calculate the skew angle of the document image. When this occurs, theprogram 322 preferably locates those six boundary pixels of the document image. FIGS. 9A through 10 show in flow chart diagram form the automatic deskew andcropping system 322, which will be described in more detail below. - As can be seen from FIGS. 3 and 7-8, when the
document 310 has adocument image 702 that is of an oval shape, theprogram 322 of FIG. 3 detects multiple edges that are of different skew angles and/or shorter than the predetermined edge length. In one embodiment, the predetermined edge length contains approximately twenty five pixels. In alternative embodiments, the predetermined edge length can be longer or shorter than twenty five pixels. - When the
program 322 detects that thedocument image 702 is not rectangular, theprogram 322 preferably locates the six boundary pixels (i.e., the first and last document image pixels 710 and 712 of the first scan line of thedocument image 702, the leftmostdocument image pixel 714, the rightmostdocument image pixel 716, and the first and last document image pixels 718 and 720 of the last scan line of the last scan line of thedocument image 702. As can be seen from FIG. 7, the first and last document image pixels 710 and 712 of the first scan line of thedocument image 702 overlap each other and the first and last document image pixels of the last scan line of thedocument image 702 overlap each other. - As can be seen in FIGS. 3 and 5-6, the
imaging program 326 then corrects the skew of thedocument image 502 in accordance with the skew angle α received from the automatic deskew andcropping system 322 and eliminates all of thebackground 504 in thescan image 500 in accordance with the six document image pixels 518-526. Theimaging program 326 does this in a known way, which will not be described in more detail below. The processeddocument image 600 is shown in FIG. 6. - As can be seen from FIGS. 5 and 6, the processed
document image 600 of FIG. 6 is identical to theunprocessed document image 502 of FIG. 5 except that no background information of thescan image 500 is displayed in FIG. 6. In addition, the processeddocument image 600 is not skewed. Moreover, the processeddocument image 600 of FIG. 6 does not have the cut-off edge. This is due to the fact that theimaging program 326 further trims thedocument image 502 of FIG. 5 based on the document image pixels 518-526. - When processing the
document image 702 of FIG. 7, the automatic deskew and cropping system 322 (FIG. 3) only sends the pixel information of the six boundary pixels 710 through 720 to imaging program 326 (FIG. 3). Based on these six pixels 710-720, theimaging program 326 creates asmallest rectangle 800 that contains all of these pixels and thedocument image 702. Theimaging program 326 then trims away everything in thescan image 700 of FIG. 7 that is outside of therectangle 800 to obtain the croppeddocument image 702. - As can be seen from FIG. 3, because the automatic deskew and
cropping system 322 interfaces with thescan control program 324, the automatic deskew andcropping system 322 receives one scan line of pixels from thescan control program 324 as soon as thescan control program 324 controls thescanner 218 to finish scanning one such scan line. This causes the automatic deskew andcropping system 322 to operate in parallel with the operation of thescan control program 324. As a result, the automatic deskew andcropping system 322 can determine the skew angle and boundary information of the document image of thedocument 310 as soon as thescan control program 324 finishes scanning thedocument 310. - It is, however, appreciated that the automatic deskew and
cropping system 322 is not limited to the above described configuration. FIG. 4 shows another embodiment of theimage processing system 320 in which the automatic deskew andcropping system 322 only interfaces with theimaging program 326. This allows the automatic deskew andcropping system 322 to detect the skew angle and boundary information of the document image of thedocument 310 after theentire document 310 has been scanned and its scan image has been sent to theimaging program 326 from thescan control program 324. - FIG. 9A illustrates a sample user interface for implementing the automatic deskew and image cropping system of FIGS. 3 and 4. The present invention increases user ease by automatically deskewing and cropping scanner background information and extraneous information (although automatic functions can be disabled, if desired). For automatic operation, the system starts810 a user is given options for specifying a type of document to be scanned, such as text only, mixed format, photo only, custom options, etc., and the automatic deskew and
cropping system 322 finds the best crop and deskew operation. The options can be presented in two tiers. The first tier allows novice users to simply specify the kind of document they are scanning (photo only, mixed document, etc.). The second tier allows more sophisticated users to further customize processing. - Namely, several options can be presented to a user. These options increase processing flexibility for the user. First, second and
third options fourth option 818 can be for advanced users with customization functions. Thefirst option 812 can be for images that contain text only and thesecond option 814 can be for mixed formats (for example, images that contain a combination of photographs, text, graphics, etc). For the first andsecond options third option 816 can be for images that contain only photos. If the user chooses thefourth option 818, the user can be presented with three customization sub-options. A first sub-option 820 for images that contain only photos, asecond sub-option 822 for mixed formats and athird sub-option 824 for manually disabling theautomatic functions 826 after which, the routine ends 828. - If the
third option 824 and thefirst sub-option 820 are chosen, an automatic skew andcrop detection step 830 is performed based on a first set of predefined parameters (discussed below in detail). If thesecond suboption 822 is chosen, an automatic skew andcrop detection step 832 is performed based on a second set of predefined parameters (discussed below in detail). The automatic deskew andcropping system 322 determines the boundaries and location of the scanner background and extraneous information, if it exists. As discussed above, the extraneous information can be caused by a document carrier. The document carrier information is found based on the first and second set of predefined parameters (discussed below in detail). Next, the automatic deskew andcropping system 322 performs an automatic deskew and cropping (crop out portions of the scanned data that are not part of the photo) function assteps - The following description is for illustrative purposes only. The extraneous device can be any extraneous device and does not have to be a document carrier. Specifically, if a document carrier is the extraneous device causing the extraneous information, depending on the option chosen by the user, the automatic deskew and
cropping system 322 searches for the known physical characteristics of the particular document carrier. For instance, if the user chooses the third option or the first sub-option, for example, for photos only, the automatic deskew andcropping system 322 searches for either a half or full size document carrier. This is because a user could utilize either the half or full size document carrier for a photo. Similarly, if the user chooses the second sub-option, for example for mixed formats, the automatic deskew andcropping system 322 preferably searches for a full size document carrier. This is because a mixed document typically is too large for the half size document carrier. Therefore, a search is preferably performed for either the half or full size document carrier if the third option or the first sub-option (photo only) is chosen while a search is preferably performed for the full size document carrier if the second sub-option (mixed format) is chosen. - For the half size document carrier, an initial search is performed for known physical characteristics, such as a semicircle at the bottom, top, right, or left edges. This is because some document carriers, such as the half size document carrier, can be fed into the scanner device in any orientation. As a result, the known physical characteristic, such as the semicircle, can appear at the bottom, top, left or right edges of the scan. For the full size document carrier, an initial search is performed for known physical characteristics, such as a semicircle at the bottom or top edges. This is because some document carriers, such as the full size document carrier, can be fed into the scanner device in only two orientations. As such, the known physical characteristic, such as the semicircle, can appear only at the bottom or top edges of the scan.
- If the known physical characteristic is found, scanned data representing edges of the document carrier are ignored during computation of skew and crop statistics, and are eventually cropped out and discarded as unwanted information of the scan. Also, because the full size document carrier is too long to be fed sideways, only one orientation for scanning exists if the full size document carrier is used. As such, the known physical characteristic, such as the semi-circle, can only be at the bottom or top edges and cannot be at the left or right edges. Hence, the present invention searches for these known physical characteristics of document carriers, such as semi-circles, and crops out unwanted information appropriately. By ignoring the edges of the document carrier, more accurate automatic deskewing and cropping of the information of interest can be performed.
- FIGS. 9B and 9C show the process of the automatic deskew and cropping system322 (FIGS. 3 and 4) in developing the edge segments and the six boundary pixels of the document image. FIG. 10 shows the process of the
system 322 of FIGS. 3 and 4 in detecting the skew angle of the document image based on the edge segments developed by the process of FIGS. 9B and 9C. FIG. 11 shows how edge segments are developed in a rectangular document image. FIG. 12 shows how edge segments are developed in a circular or oval document image. FIGS. 9B, 9C and 10 will be described in more detail below, also in connection with FIGS. 11 and 12. - In one embodiment, an edge of the document image is determined within a scan image and that edge is used to determine the skew angle of the document image. The edge can be determined by locating the first or last document image pixel of each scan line of pixels in the scan image that belongs to the document image (i.e., the edge pixel of the document image along that scan line). This is accomplished by comparing each scan line of pixels with a predetermined scan line of background pixels. The skew angle of the document image is then determined by computing the slope of the detected edge in the scan image.
- In another embodiment, a pixel of a scan line is regarded as an image pixel when its color is different from the color of the corresponding reference background pixel by more than the predetermined threshold value and the color of its adjacent pixel is also different from the color of the corresponding reference background pixel by more than the predetermined threshold value. In other words, small groups of pixels are analyzed together, such as a neighborhood of pixels. This can be accomplished by using a sliding window of pixels. This increases accuracy and more readily distinguishes actual wanted document data from unwanted extraneous information and background noise. This embodiment is more robust in the presence of scanner noise.
- Specifically, as can be seen from FIGS. 9B and 9C, the process starts at
step 900. Atstep 902 color values of background pixels are set. Atstep 904 variables are initialized and a neighborhood size is defined. The neighborhood size can be defined with a pixel size having a neighborhood height of pixels and a neighborhood width of pixels (nh rows, nw columns). The values are set as the reference values for comparing with the colors of the pixels of a neighborhood around each scan line of the scan image to locate the first and last image pixels (i.e., edge pixels) of each scan line. In another embodiment, only the luminance valve of each pixel is used, where luminance is computed as approximately one-fourth red, one-half green, and one-eighth blue. In one embodiment, a pixel is regarded as an image pixel when its color (or luminance) is different from the color (or luminance) of the corresponding reference background pixel by more than a predetermined threshold value. The term color will be used hereinafter interchangeably to mean color and/or luminance. The threshold value is typically a constant that is determined based on the expected variability of the scanner background. - At
step 906, a sliding window can be set up as a neighborhood of pixels comprised of several rows, such as two, three, four, etc. rows. The size of the sliding window or neighborhood of pixels can be adjusted to suit certain conditions. For example, a larger neighborhood of pixels can be used when a photograph is to be scanned. In contrast, a smaller neighborhood of pixels can be used when a mixed document is to be scanned. It should be noted that the neighborhood of pixels for a mixed document should not exceed a maximum predetermined value. This is because text data could be mistaken as background noise if a neighborhood of pixels that is too large is used. The neighborhood of pixels can be defined with a size having a neighborhood height and a neighborhood width (nh rows, nw columns). - At
step 908, it is determined if all of the scan lines of the scan image have been processed. If so, steps 910-914 are performed to calculate the skew angle of the document image inside the scan image. As can be seen from FIG. 9B,step 912 is employed to determine if the document image is of non-rectangular shape. The program 322 (FIGS. 3 and 4) does this atstep 912 by determining if different skew angles are found for the edge segments of the document image. If so, theprogram 322 does not calculate the skew angle of the document image. Instead, the skew angle is set to zero instep 916. If, atstep 912, it is determined that these are not multiple skew angles, then step 914 is performed to calculate the skew angle of the document image. In either case, theprogram 322 finishes by computing the cropping boundaries instep 917 and ending atstep 954. - When, at
step 908, if it is determined that the scan image has not been completely checked,step 918 is then performed to obtain the neighborhood around the next unchecked scan line of pixels (e.g., scan row r). Next, although the sliding window is initially set at some number, atstep 920 the sliding window is incremented every time a scan line is checked so that row r is appended to the bottom of the sliding window and the topmost row is deleted. A color of a neighborhood around each of the pixels of the scan row r is then compared with a color of predetermined background pixels atstep 922 to determine if they match. In other words, for a neighborhood of three rows, rows r, r-1, r-2 are compared to predetermined background pixels. If they match, (i.e., rows r-nh+1 through r contains substantially background pixel values), then theprogram 322 returns to step 908 viastep 924. If not, step 926 is performed, at which the first document image pixel (i.e., pixel c1) where a neighborhood index, such as row r and column c1 having a color different from that of the corresponding background pixel is located. In this case, row r and column c1 indicates a lower corner. However, this row is arbitrary and any row could be used for the neighborhood index, as long as it is the same all of time. - The process then moves to step928, at which the boundary pixel storage is updated. This is done by comparing the current first and last pixels with the stored six boundary pixels to determine if these six pixels need to be updated. The positioned values of these six pixels are initially set at zero. If, for example, the positional value of the current first pixel is less than that of the stored leftmost pixel, then the stored leftmost pixel is replaced with the current first pixel. This allows the six boundary pixels of the document image to be finally determined.
- Then step930 is performed, at which it is determined if neighborhood index (r, c1) continue a left edge segment. If so,
step 934 is performed to continue the edge segment by adding neighborhood index (r, c1) to segment the edge segment. For example, as can be seen from FIG. 11, withimage pixels 1070 andbackground pixels 1080, ifscan line 1100 is currently checked andpixel 1106 is determined to be the first pixel of thescan line 1100. Step 930 of FIG. 9C then determines if thepixel 1106 continues theedge segment 1102 and causes theedge segment 1102 to extend from thepixel 1106. However, edge segments are preferably allowed to skip a predefined number of rows if subsequent rows are not aligned. This is because random noise can cause one or several rows to temporarily misalign or diverge for only a few rows. In this case, the edge segment should continue. FIG. 12 shows the development ofedge segments - Thus, as can be seen from FIG. 9C, when the answer is no at
step 930, it is determined instep 932 whether a predefined number of rows has been exceeded. If so,step 936 is then performed to end that left edge segment. Step 938 is then performed to start a new left edge segment from this first pixel. If a predefined number of rows has not been exceeded, then steps 940 through 952 are performed so that a last neighborhood column index c2 is located where a color differs from that of the corresponding background pixel. As can be seen from FIGS. 9B-9C, steps 940-952 are basically the same steps as steps 926-938, except that steps 940-952 are employed to locate and process the last pixel of the scan line while steps 926-938 are employed to locate and process the first pixel of the scan line. Also, steps 926-938 can be performed in parallel with steps 940-952. In other words, steps 940-952 do not have to be performed sequentially after steps 926-938. - FIG. 10 shows the process of updating the skew information based on a detected edge segment. This process is undertaken when a segment is ended, as in
steps step 1002 whether multiple skews have already been found. If so, the routine ends atstep 1014. If not, whenever the segment is too short, it is discarded instep 1004. If the segment is long enough, a numerator and denominator ratio are determined atstep 1006. Next, if the ratio is too different from that of a previous segment, or in other words, if the document image is determined to have a non-rectangular shape instep 1008, the skew angle is set to zero, and subsequent segments are discarded instep 1010. Otherwise, the slope of the detected segment is used to update the skew angle estimate instep 1012 and the routine then ends instep 1014. - In addition, in typical scanner devices, the user is permitted to change brightness settings, which alters the luminance values of the scanned data. Since the automatic deskew and
cropping system 322 can use luminance values to perform edge detection, the automatic deskew andcropping system 322 performs dynamic adjustment of background threshold values to match changes in brightness settings. Moreover, the user is usually permitted to change color/grayscale mode settings (such as 24 bit color or 8 bit grayscale scans), which alters the luminance values of the scanned data since the luminance values of grayscale images are different from the color images. The automatic deskew andcropping system 322 performs dynamic adjustment of threshold values to match changes in color/grayscale mode settings. - In the foregoing specification, the invention has been described with reference to specific embodiments thereof. It will, however, be evident to those skilled in the art that various modifications and changes may be made thereto without departing from the broader spirit and scope of the invention. The specification and drawings are, accordingly, to be regarded in an illustrative rather than a restrictive sense.
Claims (25)
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US6310984B2 (en) | 2001-10-30 |
JPH11313207A (en) | 1999-11-09 |
EP0949802A2 (en) | 1999-10-13 |
EP0949802A3 (en) | 2001-05-16 |
US6430320B1 (en) | 2002-08-06 |
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