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Published byLynette Barker Modified over 9 years ago
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Pattern Recognition 1/6/2009 Instructor: Wen-Hung Liao, Ph.D. Biometrics
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Outline n Basic Concepts n Fingerprint n Iris Scan n Hand Geometry n Face Recognition
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Identification vs Verification n Identification: Who am I? One-to-many search n Verification: Am I who I claim I am? One-to- one search n Detection: Find out whether there is an instance of a given type of object in an environment. n Recognition: detection + identification
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Terminology n False Acceptance Rate (FAR) : the probability that a biometric device will allow a ‘bad guy’ to pass. Related to security. n False Rejection Rate (FRR):the probability that a biometric device won't recognize a good guy. Related to convenience. n The point where false accept and false reject curves cross is called the "Equal Error Rate." The Equal Error Rate provides a good indicator of the unit's performance. The smaller the Equal Error Rate, the better.
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Validity of Test Data n Testing biometrics is difficult, because of the extremely low error rates involved. n Some are based on theoretical models. n Some are obtained from actual field testing. n It's important to remember that error rates are statistical: they are derived from a series of transactions by a population of users.
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What is a good biometric feature? n Uniqueness n Invariance n Non-intrusive n Easy (or not too difficult) to acquire n Low processing cost
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Fingerprint n Finger-scan biometrics is based on the distinctive characteristics of the human fingerprint. n A fingerprint image is read from a capture device, features are extracted from the image, and a template is created. n If appropriate precautions are followed, what results is a very accurate means of authentication.
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Fingerprints vs Finger-scans n Fingerprint images require 250kb per finger for a high-quality image. n Can be acquired using ink-and-roll procedure, optical or non-contact methods. n Finger-scan technology doesn't store the full fingerprint image. It stores particular data about the fingerprint in a much smaller template, requiring from 250- 1000 bytes.
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AFIS n AFIS (Automated Fingerprint Identification Systems) - commonly referred to as "AFIS Systems" (a redundancy) - is a term applied to large-scale, one-to-many searches. n Although finger-scan technology can be used in AFIS on 100,000 person databases, it is much more frequently used for one-to- one verification within 1-3 seconds.
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Fingerprint Characteristics n Can be classified according to the decades-old Henry system: u left loop u right loop u arch u whorl u tented arch
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Feature Extraction Steps Minutiae, the discontinuities that interrupt the otherwise smooth flow of ridges, are the basis for most finger- scan authentication.
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Accuracy n False Rejection Rates (FRR), or the likelihood that the system will not "recognize" an enrolled user's finger-scan, in the vicinity of 0.01%. n False Acceptance Rates (FAR), or the likelihood that the system will mistakenly "recognize" the finger-scan of a user who is not in the system, are frequently stated in the vicinity of 0.001%. n The point at which the FAR and FRR meet is the Equal Error Rate, frequently claimed to be 0.1%.
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Iris Scan n Iris recognition is based on visible (via regular and/or infrared light) qualities of the iris. n A primary visible characteristic is the trabecular meshwork (permanently formed by the 8th month of gestation), a tissue which gives the appearance of dividing the iris in a radial fashion. n Other visible characteristics include rings, furrows, freckles, and the corona.
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Iris Recognition Technology n Iris recognition technology converts the visible characteristics discussed before into a 512 byte IrisCode(tm), a template stored for future verification attempts.
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Accuracy n The odds of two different irises returning a 75% match (i.e. having a Hamming Distance of 0.25): 1 in 10^16 n Equal Error Rate (the point at which the likelihood of a false accept and false reject are the same): 1 in 1.2 million n The odds of 2 different irises returning identical IrisCodes: 1 in 10^52
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Benefits n Uniqueness n Established prior to birth and remains intact through out the life.
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For more details n Check Dr. John Daugman’s web page: http://www.cl.cam.ac.uk/users/jgd1000
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Hand Scan n Hand-scan reads the top and sides of the hands and fingers, using such metrics as the height of the fingers, distance between joints, and shape of the knuckles. n Although not the most accurate physiological biometric, hand scan has proven to be an ideal solution for low- to mid-security applications where deterrence and convenience are as much a consideration as security and accuracy.
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Example n HandPunch 2000/3000 model developed by Recognition Systems
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Pros and Cons n Advantages u Ease of use u Resistant to fraud u Template size u User perception n Disadvantages u Static design u Cost u Injury to hands u Accuracy
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Face Recognition n Most natural because this is how we human recognize other people. n Remains a difficult subject.
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Primary Facial Scan Technologies n Eigenfaces n feature analysis n neural network n automatic face processing
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Typical Eigenfaces
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Feature Analysis n The most widely utilized facial recognition technology n Local Feature Analysis (LFA) utilizes dozens of features from different regions of the face, and also incorporates the relative location of these features. n The extracted (very small) features are building blocks, and both the type of blocks and their arrangement are used to identify/verify.
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ANN Approach n Features from both faces - the enrollment and verification face - vote on whether there is a match. n Neural networks employ an algorithm to determine the similarity of the unique global features of live versus enrolled or reference faces, using as much of the facial image as possible.
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AFP n Automatic Face Processing (AFP) is a more rudimentary technology, using distances and distance ratios between easily acquired features such as eyes, end of nose, and corners of mouth. n Not as robust, but AFP may be more effective in dimly lit, frontal image capture situations.
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