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Face Recognition Systems

Face Recognition Systems. TEAM-1 JACKIE ABBAZIO SASHA PEREZ DENISE SILVA ROBERT TESORIERO. Overview: Face Biometrics. Facial recognition through the use of computer analysis of facial structure.

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Face Recognition Systems

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  1. Face Recognition Systems TEAM-1 JACKIE ABBAZIO SASHA PEREZ DENISE SILVA ROBERT TESORIERO

  2. Overview: Face Biometrics • Facial recognition through the use of computer analysis of facial structure. • Software measures a number of points of facial characteristics such as eyes, nose, mouth, angles of key features, and lengths of various portions. • Collected data is used to create a template through a mathematical algorithm (Neural-Networks, Eigenface) and the file is stored within the database. • File is compared to other files within the database in search of an identity match.

  3. Face Biometrics Continued • Face biometric systems employee the capturing of facial pattern characteristics through the use of still photography or video clips. • Pattern recognition software relies on: • Data collection – raw data • Feature extraction – eyes, nose, mouth, etc • Classification – class the object is placed into (male or female, skin tone, etc)

  4. FAR & FRR • FAR ( False Acceptance Rating) – the false acceptance rating is the probability that the software will incorrectly declare a successful match between the input data against the database. • FRR (False Rejection Rating) – the false rejection rating is the probability that the software will declare a failure to match the input data against the database.

  5. Face Biometric Systems Project • The face biometric systems project involved the research and testing of various facial biometric software’s based on criteria set by the clients. • Two face biometric software’s were chosen and tested (Luxand FaceSDK & VeriLook).

  6. Software Comparison Table

  7. Luxand’s FaceSDK 1.7 • After extensive testing and researching the Face Biometric Systems, we recommend purchasing • Luxand’s FaceSDK 1.7 software. It has the following strengths: • Easy to use • Ability to enroll all images • Matches work best at FAR of 50%, but produces matches at FAR of 10%. • Works best for aging • *Free demo version used

  8. Luxand FaceSDK Example Enrolled into class database This 1979 image matched with 2007 image 2008 image with 51% similarity

  9. Luxand FaceSDK Similarity Matrix

  10. VeriLook 3.2 • Designed for biometric system developers and integrators. • Allows for easy integration and rapid development of biometric applications using functionality. • Can perform simultaneous multiple face detections with the ability to process 100,000 faces per second and it recommends the minimum image size to be 640x480 pixels .

  11. Software works best with high resolution photos. False Acceptance Rating set for 100% All images matched 100% against the same image in the database. The score of 180 is interpreted as an exact match. Free demo version used VeriLook Test Result

  12. The results show that the photo from 1969 matched a photo from 2008 with a similarity score of 18 or 10%. This result is comparable with the FaceSDK age identification test, where the same image from 1969 matched the same photo from 2008 with a 61.9% similarity rate. VeriLook Aging Result

  13. Software Comparison TestLuxand FaceSDK - VeriLook • Tests were run using both Luxand FaceSDK 1.7 and VeriLook using the four photos seen here. • Similarity ratings varied from one software to the other. • Luxand FaceSDK results provided more results based on Similarity Rating than VeriLook .

  14. Luxand – VeriLook Comparison VeriLook Identification and Authentication Results FaceSDK Identification and Authentication Results

  15. Conclusion • Luxand FaceSDK 1.7 • works very well in identifying face similarity among people in a group • worked relatively well matching an image of the subject as a child • VeriLook 3.2 • had more limitations than FaceSDK, it only accepted high-res images. • results for the similarity test were lower than the FaceSDK software • PDA Security • none of the software tested was suitable for PDA security use • Further Work • we recommend further work using 3-D face biometrics software and scanners to find optimal solution for PDA security

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