This invention relates to a method to retrieve an image from a database.
With the growing popularity of digital cameras and the rapid increase of storage capacity, it is common for consumers to store thousands of photos on a personal computer or through a photo-sharing website. Content-based image retrieval (CBIR) is therefore becoming a necessity. Although there are various query methods in CBIR systems, query by example has received wide acceptance. Query by example requires the least user interaction and the query image contains more useful information for matching than other forms of query such as query by drawing.
There are several well-known CBIR systems, such as QBIC (Query By Image Content) of IBM, Photobook of Massachusetts Institute of Technology, VisualSEEk and WebSEEk of Columbia University, and MARS (Multimedia Analysis and Retrieval System) of University of Illinois at Urbana-Champaign. All these systems have query by example function.
In most CBIR systems, the user selects a query image from by the same database that is to be searched, and the query image is used to search for similar images in the database. This is not useful when the user is looking for a specific image. For example, the user may want to reprint a photograph from a large database. The user has the previously printed photograph on hand and wants to find the same photograph in the database to order reprints. Thus, what is needed is a method for to retrieve a specific image from a database when the user has a hard copy of the image.
In one embodiment of the invention, a method for searching an image database includes capturing an image of a photograph and a background, determining a boundary of the photograph in the image, cropping the photograph from the image, correcting the perspective of the photograph, compensating colors of the photograph, and matching the photograph with an image in the image database.
In accordance with the invention, a method is provided to (1) detect a photograph from a complicated background in an image captured by a camera, and (2) search for images similar to the photograph in a database.
Camera 12 outputs the captured image to a computer 18. Camera 12 can be coupled to computer 18 as a peripheral device or over a network connection (e.g., through a client computer that is connected to a server computer 18 over the Internet). Accordingly, computer 18 can be a local desktop or a remote server used to search images in a database 19. Database 19 can be part of computer 18 or an independent device coupled to computer 18.
In step 54, camera 12 captures photograph 14 and background 16 in an image 22 (
In step 56, computer 18 separates photograph 14 from the background of image 22. Typically, Hough Transformation is used to detect straight lines that form the boundary of an object. However, lines in photograph 14 and background 16 may be mistaken for the boundary of photograph 14. One embodiment of step 56 that addresses these problems is described in more detail later in reference to
If a scanner instead of camera 12 is used, the scanner may come with software that separates photography 14 from the scanner cover that makes up background 16. This is a simple step since the scanner cover provides a consistent white background. Alternatively, photography 14 is placed in a designated area for the software to crop.
In step 58, computer 18 rotates photograph 14 to compensate the perspective at which camera 12 captured photograph 14. Computer 18 can rotate photograph 14 by Affine Transformation as shown in the transition from
In step 59, computer 18 resizes photograph 14 to a resolution that matches the resolution of the images in database 19. A set of the images in database 19 saved at a low resolution (e.g., 96 by 96 pixels resolution) can also be used to speed up the matching process.
In step 60, computer 18 adjusts the color of photograph 14 to compensate the environment (e.g., lighting, distance, and angle) under which camera 12 captured photograph 14. If the color of photograph 14 is not adjusted, it may be difficult to find similar images using color feature matching because the color of photograph 14 in image 22 depends on the environment. One embodiment of step 60 is described later in reference to
In step 62, computer 18 searches for one or more images 168 (
In step 82, computer 18 removes the content of the background from image 22. To do so, computer 18 compares images 20 and 22 to determine a region 26 (
In step 84, computer 18 removes the content inside region 26. To do so, computer 18 scans region 26 line by line, first vertically and then horizontally. For each line, computer 18 preserves the first pixel and the last pixel, and removes the intermediate pixels. Thus, only the pixels that make up a perimeter 28 (
In step 86, computer 18 determines a boundary 30 (
x cos θ+y sin θ=ρ (1)
where x and y are the coordinates of a pixel that form part of the line, θ is the normal angle of the line to the origin, and ρ is the normal distance of the line to the origin.
The Hough Transformation is performed in the following fashion. First, computer 18 assigns the origin of the coordinates to the center of image 22. Second, computer 18 quantizes angle θ and distance ρ for the pixels that make up perimeter 28 (
When searching for the left and right boundary lines, angle θ is only quantized between 45° to 135°, and distance ρ is only quantized between 0 to half the width of image 22. Similarly, when searching for the top and bottom boundary lines, angle θ is only quantized between −45° to 45°, and distance ρ is only quantized between 0 to half the height of image 22.
In step 87, computer 18 validates the four boundary lines determined by Hough Transformation. This may be necessary because the result may degrade when (1) a boundary line is located too close to, or occluded by, an edge of image 22, or (2) when user hand 24 is mixed in region 26. This embodiment is described later in reference to
In step 88, computer 18 crops photograph 14 from image 22.
In step 112, computer 18 adjusts the color levels of photograph 14 by histogram equalization to uniformly distribute the color levels of photograph 14. This will compensate changes in the distance and angle at which photographs are captured by camera 12.
In step 114, computer 18 adjusts the RGB values of photograph 14 to maintain color constancy. To do this, system 10 is first calibrated with an image 170 (
Image 170 can be stored in database 19. Image 170 is assumed to be captured under standard (i.e., canonical) lighting. A hard copy of image 170 is captured as image 170A with camera 12 under an unknown lighting. The unknown lighting is assumed to be the environment under which all the photographs are captured by camera 12. Computer 18 then determines a homography matrix that transforms the RGB values of image 170 to the RGB values of image 170A. The inverse of the homography matrix is subsequently used to transform other images captured by camera 12 to approximate their RGB values under canonical lighting.
The determination of the homography matrix is now described in detail. Assume the relationship between the unknown and canonical lighting can be modeled by the following formula:
U(21)=MU(11)+λC (2)
where U(21) is the RBG value of a pixel under the unknown lighting, M is the homography miatrix, U(11) is the RGB value of the corresponding pixel under the canonical lighting, C is the illuminant parameter, and λ is a scaling factor for illuminant parameter C. Equation (2) can be rewritten as follows:
or
R(21)=m11R(11)+m12G(11)+m13B(11)+λC1 (4)
G(21)=m21R(11)+m22G(11)+m23B(11)+λC2 (5)
B(21)=m31R(11)+m32G(11)+m33B(11)+λC3 (6)
Equations (4), (5), and (6) can be written as follows:
Am=b (7)
For n point correspondences, the (3n×12)-matrix can be expressed as:
The vector m of unknowns mij and λCi can be expressed as:
m=[m11 m12 . . . m33 λC1 λC2 λC3]T (9)
The (3n)-vector can be expressed as:
b=[R1(21) G1(21) B1(21) . . . Rn(21) Gn(21) Bn(21)]T (10)
The solution for m is given by
m=(AT A)−1(ATb) (11)
After finding vector m, it is assumed that this homography (equation (2)) is valid not only to transform the reference image 170 under canonical lighting to what it will appear under the unknown lighting, but also to convert images of photographs under the canonical lighting to what they will appear under the same unknown lighting. Consequently, the inverse of matrix M in equation (2) can be calculated to convert the RGB values of all the pixels of the photography captured under unknown lighting to their corresponding RGB values under the canonical lighting as follows:
U(11) =M−1 (U(21)−λC) (12)
In step 142, computer 18 determines if the boundary line is too close to the corresponding edge (e.g., if the left boundary line is too close the left edge of image 22). A boundary line is too close to the corresponding edge when the shortest distance between them is less than a threshold. In one embodiment, the boundary line is too close to the corresponding edge when the shortest distance between the boundary line and the corresponding edge is less than 8 pixels. If so, step 142 is followed by step 144. If the boundary line is not too close to the corresponding edge, then step 144 is followed by 150.
In step 144, computer 18 determines if the boundary line is substantially parallel to the corresponding edge. In one embodiment, the boundary line is substantially parallel to the corresponding edge when their angles are within 3 degrees. If so, step 144 is followed by step 146. If the boundary line is not substantially parallel to the corresponding edge, then step 146 is followed by 150.
In step 146, computer 18 determines if the confidence (i.e., the Hough accumulator value) of the boundary line's subtense is high enough. A boundary line's subtense is the opposite boundary line in perimeter 30 of region 26. In one embodiment, the confidence of the boundary line's subtense is high enough when it is greater than 60. If so, step 146 is followed by step 148. If the confidence of the boundary line's subtense is not high enough, step 146 is followed by step 150.
In step 148, computer 18 invalidates the boundary line and searches for a new boundary line. For the new boundary line, computer 18 can limits its search to lines having angles θ between ±30° of the angle θ of the invalid boundary line's subtense.
In step 150, computer 18 validates the boundary line.
Various other adaptations and combinations of features of the embodiments disclosed are within the scope of the invention. Numerous embodiments are encompassed by the following claims.
Number | Name | Date | Kind |
---|---|---|---|
5172245 | Kita et al. | Dec 1992 | A |
5914748 | Parulski et al. | Jun 1999 | A |
5995639 | Kado et al. | Nov 1999 | A |
6011857 | Sowell et al. | Jan 2000 | A |
6128398 | Kuperstein et al. | Oct 2000 | A |
6324545 | Morag | Nov 2001 | B1 |
6363168 | Kakuma | Mar 2002 | B1 |
6735329 | Schultz | May 2004 | B2 |
7020352 | O'Callaghan et al. | Mar 2006 | B2 |
20030059111 | Druitt et al. | Mar 2003 | A1 |
20040120606 | Fredlund | Jun 2004 | A1 |
Number | Date | Country | |
---|---|---|---|
20040202385 A1 | Oct 2004 | US |