WO2008042830A2 - Method and apparatus for identifying facial regions - Google Patents
Method and apparatus for identifying facial regions Download PDFInfo
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- WO2008042830A2 WO2008042830A2 PCT/US2007/080034 US2007080034W WO2008042830A2 WO 2008042830 A2 WO2008042830 A2 WO 2008042830A2 US 2007080034 W US2007080034 W US 2007080034W WO 2008042830 A2 WO2008042830 A2 WO 2008042830A2
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- G—PHYSICS
- G06—COMPUTING OR CALCULATING; COUNTING
- G06V—IMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
- G06V40/00—Recognition of biometric, human-related or animal-related patterns in image or video data
- G06V40/10—Human or animal bodies, e.g. vehicle occupants or pedestrians; Body parts, e.g. hands
- G06V40/16—Human faces, e.g. facial parts, sketches or expressions
- G06V40/168—Feature extraction; Face representation
- G06V40/171—Local features and components; Facial parts ; Occluding parts, e.g. glasses; Geometrical relationships
Definitions
- the present invention relates to apparatus and methods for analyzing the skin and more particularly to digital imaging and identification and analysis of specific facial regions of interest.
- the skin covering the nose is exposed to the most direct and intense rays of the sun , i.e., those emitted from late morning to early afternoon and therefore has a greater number of sebaceous glands and pores to provide skin oils to prevent the skin of the nose from burning and drying out.
- the skin of the eyelids is shielded from the sun due to the bunching of the eyelid and retraction into the eye socket when the eye is open.
- the eyelids must be thin and flexible with numerous folds to facilitate the rapid opening and closing of the eye.
- MEl 6800807V.1 identify the facial regions of interest.
- the cheek area could be denoted using lines connecting facial fiducial reference points such as the corner of the nose, the corner of the lip, the ear, the lateral edge of the eye and back to the corner of the nose. While effective, such manual operations are labor intensive and require trained operators. It would therefore be beneficial to identify facial regions on images automatically to increase the speed and consistency of identification of the facial regions and to decrease the reliance upon operator input.
- the present invention which includes a recognition that the pupils/ corneas of a subject may be used as reference points to identify facial regions.
- Apparatus and methods are disclosed for automatically identifying the pupils/corneas in the image of a subject by testing pixel values to identify objects in an image having the characteristics of pupils or pupil-like fiducial reference points, such as flash glints, etc. The identification of these reference points permits the location of facial regions to be identified.
- FIG. 1 is a schematic representation of image capturing apparatus and the resultant image captured thereby.
- FIGS. 2a and 2b are portions of a flowchart illustrating a process in accordance with an embodiment of the present invention for automatically identifying facial regions.
- FIG. 3 is a schematic representation of the process of "sub-recting" an image.
- FIG. 4 is a schematic representation of a CCD/filter array and the image data produced thereby.
- FIGS. 5a- 5c are schematic representations of the process of "thresholding".
- FIG. 1 shows a human subject S whose image is being captured by an imaging system 10 in accordance with the present invention.
- the imaging system 10 has a digital camera 12, which captures an image in digital form and communicates the digital image data to a computer 14, e.g., a personal computer.
- the computer 14 then displays the image I on a display 16.
- Imaging systems of this type are disclosed in the following U.S. patent applications: United States Patent Application Serial No. 10/008,753, entitled, "Method of Taking Images of the Skin Using Blue Light and the Use Thereof, which was published as United States Application Publication No. US 2004/0146290 Al, United States Patent Application Serial No.
- the image data I D defining the image I is in the form of pixel intensity data for each of an array of display pixels P ⁇ 5 which may be identified by their location on an X-Y grid 18.
- the image data I D informs a computer, e.g., 14, which pixels to illuminate on a display 16 and the intensity of illumination (greyscale) of each pixel at location (Xj, Y,) in order to reproduce the image I.
- a computer e.g. 14, which pixels to illuminate on a display 16 and the intensity of illumination (greyscale) of each pixel at location (Xj, Y,) in order to reproduce the image I.
- facial regions e.g., R 1 , R 2 , R 3 may be identified by calculating their location and shape if the location of both of the subject person's pupils P 1 , P 2 is known. More particularly, given that the center of pupil Pi is located at X], Yi and that the center of pupil P 2 is X 2 , Y 2 , the interpupilary distance IP D5 the facial center Fc (midpoint of the line joining the pupils Pi , P 2 and the facial tilt angle AT may be calculated.
- the semi-distance S D is defined as 1 A the interpupilary distance IPD-
- the standard shape and standard locations of pertinent facial regions e.g., Ri, R 2 , R 3 can be defined relative to the facial center F c / ⁇ upils P 1 , P 2 , e.g., in terms of the distances of the vertices, e.g., V 1 , V 2 ... etc. defining the polygons representing the facial regions R 1 , R 2 , R 3 from the facial center
- the displacement of the vertices V 1 , V 2 ... can be expressed in relative terms, e.g., as fractions or multiples of the semi- distance S D - In this manner, the image need not be related to standard metrics units.
- the X, Y location of the pupils could readily be converted into standard units of measurement, such as inches or centimeters by way of comparison to a photographed ruler.
- FIGS. 2a and 2b are portions of a flowchart showing an exemplary process for doing so.
- the subject S is positioned and a digital photograph is taken 52 (see FIG. 1 where the subject S is positioned before the digital camera 12).
- the digital photograph data is loaded 54 into the computer 14.
- From the photographic image data I D (see FIG. 3) a subset image area or sample region S R is selected 56.
- the sample region S R is an area in the image data I D where there is a high probability that the pupils will be located.
- a sample region S R may be defined which exhibits a high probability of containing the image of the pupils P 1 , P 2 . This is due to human physiology, viz., the pupils P 1 , P 2 will reside in the upper half of the image, i.e., above line Y B and below line Yj 1 . With a properly positioned subject, the pupils Pi, P 2 will be present between left and right margin lines X L , X R .
- the limits of the sample region S R can be moved to examine additional areas of the image data ID- For example, the upper limit of the sampled region S R could be moved to line Yj 2 -
- the purpose of selecting a smaller, subset image area to look for the pupils P 1 , P 2 is to reduce the amount of time necessary to find the pupils by reducing the number of pixels that need to be examined and analyzed as shall be described below.
- This process of selecting a rectangular subset sample region S R is sometimes referred to as "sub- recting" or "cropping".
- a similar rationale motivates the selection 57 of a sub-sample of pixels within the sample region S R for testing.
- the process of selecting a sub- sample is merely skipping every N pixels in the horizontal and/or vertical direction. For example, if only one of every five pixels in the sample region S R is tested/analyzed,
- the analysis time is reduced to one-twenty-fifth the amount of time to test all pixels.
- the present invention can be utilized by searching 58 for black pupils which offer no reflection of light or by searching 64 for flash glints (reflections off the cornea which are very closely associated with the pupils, which reflect the light illuminating the face.)
- the appropriate method would depend on the orientation of the subject S relative to the camera 12, i.e., positioned at an angle at which either reflection or no reflection occurs.
- the present invention can utilize either/both of the methods, e.g., sequentially, in the event that the first method does not find the pupils.
- the subject can be positioned at angle relative to the flashes that will provide a high probability of either black pupils (with no reflection) or flash glints (with reflection).
- the pixel qualification threshold is initialized 60 to the minimum value, i.e., corresponding to black.
- Each pixel in the image data I D has a corresponding intensity represented initially by a voltage which is induced in a solid state capacitor corresponding to a pixel by light impinging on the capacitor. This voltage is digitized to a numeric value.
- FIG. 4 illustrates an array of light sensitive elements, such as a CCD array 200 with a plurality of sensor elements 202 corresponding to pixels.
- the CCD array 200 has a Bayer filter 203 with a plurality of filter elements 204 in alternating colors: red, green and blue (R 3 G 3 B).
- the outputs of the plurality of light sensor elements 202 can be resolved into three discrete color grids/channels: green image data 206, red image data 208 and blue image data 210.
- the process of selecting 62 the red channel image 208 (from the sub-rected and sub-sampled image subset) for analysis has the same effect as "sub-recting" 56 and "sub-sampling" 57, viz., it reduces the number of pixels to be analyzed and the analysis time (by two thirds), and is referred to as "sub-planing".
- the red channel image 208 also exhibits better resolution of the pupils than the blue or green channels.
- the RGB image is converted 66 to L*a*b* colorspace. This can be done by known algorithms.
- the conversion 66 is conducted because the reflected flash glints are more readily distinguished in the L* axis image data which expresses brightness/ darkness than in any of the color channels of an image expressed in RGB format.
- the pixel qualification threshold is initialized 68 to the
- MEl 6800807V.1 maximum i.e., the value corresponding to white light of the highest intensity registered by the pixels 202 in the CCD array 200.
- the L* channel or "sub-plane" may be selected 70 to test the pixels in that image data subset after being processed by a square convolution filter.
- a square convolution filter is used because the flash glint is square in shape.
- each pixel within the tested pixel sample subset is compared 72 to the threshold value to identify "qualifying" pixels, i.e., those pixels which are either equal to or less than the threshold in the case of the black pupils or equal to or greater than the threshold in the case of flash glints.
- FIG. 5a through 5c illustrate of the process appearing in the flow chart shown in FIG. 2a and 2b.
- the result of the comparison 72 of each pixel in the sample set to the threshold results in the identification of "qualifying" pixels.
- An enlarged fragment F 1 of the image IS 1 shows the qualifying pixels near one of the eyes of the subject. Pixels 300, 302, 304, 306, 308 and 310 all qualify by passing the threshold test, e.g., in the case of black pupils, each of these pixels would be at or below the established current threshold.
- the image subset IS 1 in FIG.
- FIG. 5a is incomplete to illustrate the image that would result from displaying only qualifying pixels at the lowest threshold in the case of black pupils or the highest threshold used when testing for flash glints 64.
- the process of testing for qualifying pixels does not require the display of the resultant qualifying pixels, since they can be identified based upon their intensity value, but FIGS. 5a-5c are useful in visualizing this process.
- the qualifying pixels are spatially related in that they have a specific distance of separation in the X and Y directions, e.g., pixels 308 and 310 are separated by a distance D 1 of three pixels in the X direction With respect to pixels 304 and 310 there is a distance D 2 of four pixels in the X direction and 1 pixel in the Y direction for a total of 5 pixels distance.
- Pixels 302 and 304 are adjacent or "connected" pixels sharing a vertex between them.
- MEl 6800807V.1 pixels 302 and 304 Having established this definition, one can identify and "fill-in” 74 (FIG. 2b) "connected" pixels that would otherwise not qualify based on light intensity value as is shown FIG. 5b, i.e., characterize them as qualifying pixels. For example, with respect to pixels 302 and 304 which are defined as being “connected”, pixel 326 represents a connected pixel which is "filled-in” and therefore has a "qualifying" status. Having established criteria for "qualifying" pixels, i.e., based on intensity, and connectedness, qualifying pixels can then be tested for "relatedness".
- a pixel can be determined to be "related" to another pixel if it is within a specified distance Dx from the other pixel.
- the concept of "relatedness” can then be utilized to define "objects" (or “blobs" - binary large objects), viz., an "object” can be defined as which are having a minimum number of related qualifying pixels.
- the number of qualifying pixels in each object can then be counted 76 to determine the size of each "object". For example, we can utilize a relatedness test that the pixels are within 5 pixels distance cumulatively, in the X and Y directions, define an "object” as having 2 or more "related" pixels and the boundary of each of the objects can be defined as that boundary which encloses all related pixels.
- FIG. 5a illustrates a first object O 1 (dashed rectangle) containing pixels 302, 304, 308 and 310 each of which are separated by less than or equal to 5 pixels in the X and/or Y directions from at least one other pixel in the object Oi .
- Pixels 300 and 306 qualify relative to the threshold, but are not close enough to other pixels to be related to them to constitute an "object”.
- the number of pixels can be counted 76 and this count can then be compared to a given size criterion to determine 78 if any objects have a sufficient number of pixels to be considered indicative of pupils.
- the threshold for qualification is incremented 80 (for black pupils, the threshold is increased and for flash glints the threshold is lowered). Incrementation 80 of the qualification threshold permits additional pixels to quality on the next testing sequence. This process of progressively incrementing/decrementing the threshold criteria is known as "thresholding". For any given threshold value, if a pixel passes the test, it is given a value of "1", if it fails, a value of "0".
- a test is conducted 82 as to whether a maximum or minimum testing threshold has been exceeded without the identification of the pupils. For example, when testing for black pupils, if the threshold is incremented up to a level beyond which pupils may be reliably identified, such as an intensity value associated with light grey or white, then the reliable testing range has been exceeded without identifying the pupils. If the maximum or minimum testing threshold has been exceeded, then the automatic identification of pupils has failed and a back up procedure is conducted. Namely, a message is displayed 84 to the operator to manually mark the image to show the location of the pupils.
- the human operator can then locate the pupils and indicate their location, e.g., by means of positioning the arrow cursor and double clicking or by touching a stylus to a touch screen display at the location where the pupils are shown. Accordingly, at step 86, the operator notes the location of the pupils, e.g., with a stylus. Given the identification of pupil location, the locations of the various facial regions of interest can then be calculated 88 relative to the pupils. The process is then stopped 110.
- step 82 If at step 82 the testing threshold has not been exceeded, then comparison 72 proceeds to identify additional qualifying pixels. After additional testing 72 and incrementation 80 of the threshold, more and more pixels should qualify from the image subset IS ⁇ . Referring to FIG. 5b, the fragment F 2 of the image data subset IS 2 has more qualifying pixels than were identified in FIG. 5a. hi FIG. 5b, the addition of more qualifying pixels, e.g., 314 and 318 has given rise to the existence of additional objects, viz., O 2 and O 3. Furthermore, the original object Oi has changed in shape and size. Because the present invention relies upon the identification of two pupils to provide sufficient information in order to calculate the locations of the facial regions of interest, at step 90 (FIG.
- FIGS. 5a-5c show a positional center, C 1 of an Object O 1 , which may be determined by taking the averages of the X and Y coordinates of each of the related pixels of the object. As the object O 1 grows (in FIGS. 5b and 5c) the center C 1 , C 2 , C 3 moves, such that it more closely approximates the center of pupil P.
- An average radius R 1 , R 2 , R 3 associated with each Ci, C 2 , C 3 can be calculated by averaging the distance from the center, e.g., C 1 to the boundary line of the object O 1 in the X and Y directions.
- "Roundness" can then be tested by determining the percentage of pixels contained within the circle formed by rotating the radius, e.g., R 1 about center C 1 ( as shown by arcs A 1 , A 2 , A 3 ).
- the percentage criteria can be determined empirically, i.e., that percentage which is predictive of roundness. Clearly, 100% would be predictive, but a lesser percentage, e.g., 80% may accurately predict roundness.
- the object shape e.g., object O 1 of FIG. 5c, can be tested to ascertain if it approximates a square (within a given tolerance range). The existence of a square object, e.g., O 1 is predictive of roundness.
- a test is made as to whether there are more than one qualifying objects by shape. If not, then the threshold is incremented 80 and testing 72 resumes because two pupils need to be identified. If there are more than one qualifying objects (by shape), the distances between all possible object pairs is then calculated 96. Those object pairs with distances in the range of pupil separation are identified 98 and tested at step 100 to identify qualifying object pairs that have a horizontal attitude within a permissible tolerance range of tilt (to allow for head tilting). If 102 no object pair(s) still qualifies, then the process of incrementing 80 and testing 72 is repeated. If 104 more than one object pair qualifies, then automatic pupil identification has failed due to the fact that the testing cannot discern between the pupils and another pair of objects which are not pupils.
- the qualifying object pair is tested 106 to see if it is in an acceptable X and Y position, i.e., that the pupils are not too far to the left or the right, or too far towards the top or bottom of the image. Otherwise, the tester would be required to either mark the pupils manually 84 or retake the image due to the improper positioning of the subject, hi the
- facial regions may be defined as polygons where the position of each vertex is expressed relative to the facial center at a distance some fraction or multiple of the semidistance. In this manner, the facial regions that are calculated will be different for persons with different head sizes, assuming that such differences lead to different pupil/glint locations (and correspondingly different semidistances).
- facial regions can be determined automatically from digital images without human intervention or assistance or relying on fiducial landmarks. The process is fast, e.g., being completed in about 0.2 seconds, and reproducible, each region being calculated independently so the calculated facial regions are automatically adjusted for different head sizes, locations, tilt and rotation.
- Features contained within the identified facial regions can then be analyzed, e.g., using multiple image illumination types, as disclosed in applicants' co-pending United States Patent Application Serial No.
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Abstract
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Priority Applications (3)
| Application Number | Priority Date | Filing Date | Title |
|---|---|---|---|
| EP07843578.1A EP2082355B1 (en) | 2006-10-02 | 2007-10-01 | Method and apparatus for identifying facial regions |
| CN2007800364491A CN101573714B (en) | 2006-10-02 | 2007-10-01 | Method and apparatus for identifying facial regions |
| BRPI0719838A BRPI0719838B8 (en) | 2006-10-02 | 2007-10-01 | METHOD TO IDENTIFY A PERSON'S FACIAL REGION IN A DIGITAL IMAGE |
Applications Claiming Priority (4)
| Application Number | Priority Date | Filing Date | Title |
|---|---|---|---|
| US84874106P | 2006-10-02 | 2006-10-02 | |
| US60/848,741 | 2006-10-02 | ||
| US11/863,323 | 2007-09-28 | ||
| US11/863,323 US8103061B2 (en) | 2006-10-02 | 2007-09-28 | Method and apparatus for identifying facial regions |
Publications (2)
| Publication Number | Publication Date |
|---|---|
| WO2008042830A2 true WO2008042830A2 (en) | 2008-04-10 |
| WO2008042830A3 WO2008042830A3 (en) | 2008-08-07 |
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Family Applications (1)
| Application Number | Title | Priority Date | Filing Date |
|---|---|---|---|
| PCT/US2007/080034 Ceased WO2008042830A2 (en) | 2006-10-02 | 2007-10-01 | Method and apparatus for identifying facial regions |
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| Country | Link |
|---|---|
| US (1) | US8103061B2 (en) |
| EP (1) | EP2082355B1 (en) |
| CN (1) | CN101573714B (en) |
| BR (1) | BRPI0719838B8 (en) |
| RU (1) | RU2455686C2 (en) |
| WO (1) | WO2008042830A2 (en) |
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- 2007-10-01 EP EP07843578.1A patent/EP2082355B1/en active Active
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| EP1296279A2 (en) | 2001-09-20 | 2003-03-26 | Eastman Kodak Company | Method and computer program product for locating facial features |
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| CN101893858A (en) * | 2010-07-15 | 2010-11-24 | 华中科技大学 | A method for controlling the distance between the user's eyes and the screen of an electronic device |
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| CN101573714A (en) | 2009-11-04 |
| RU2455686C2 (en) | 2012-07-10 |
| EP2082355A4 (en) | 2013-07-17 |
| WO2008042830A3 (en) | 2008-08-07 |
| EP2082355B1 (en) | 2016-02-10 |
| US20080080746A1 (en) | 2008-04-03 |
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| CN101573714B (en) | 2012-11-14 |
| US8103061B2 (en) | 2012-01-24 |
| RU2009116641A (en) | 2010-11-10 |
| BRPI0719838B8 (en) | 2022-08-30 |
| EP2082355A2 (en) | 2009-07-29 |
| BRPI0719838B1 (en) | 2019-11-12 |
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