Biometry: Difference between revisions
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Acquisition methodology: |
Acquisition methodology: |
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touching vs. sweeping |
touching vs. sweeping |
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=typical extraction flow= |
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*fingerprint image |
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*binarization |
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*thinning |
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*minutiae extraction |
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*post processing |
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*minutiae |
Revision as of 13:34, 15 February 2005
Overview
- Broad Overview on Biometric Criteria
- Facial recognition
- Use, Scenario, Features
- General course
- Approaches
- Summary
- Insights on Fingerprints
- Features
- Acquisition
- Recognition
- Demonstration
- Problems
Short Introduction
- I biometry: the statistical analysis of biological
observations and phenomena (Merriam-Webster Online Dictionary)
- I biometric: a measurable, physical characteristic or
personal behavioral trait used to recognize the identity, or verify the claimed identity of a person
- I Three levels:
- 1. I know something (passwords)
- 2. I have something (tokens)
- 3. I am something (biometry)
Classification
Two diffent modes must be distinguished:
- Identification “Who is it?”
- Authentication “Is it her?”
Quality indices
False Rejection Rate (frr)
- Rate of authentication attempts from legitimate users that are rejected.
False Acceptance Rate (far)
- Rate of authentication attemps from illegitimate users (e.g. attackers) that are accepted.
Equal Error Rate (eer)
- The eer equals the far and frr when the system is configured so that far = frr.
Failure to Enroll Rate (fer)
- Rate of users that can’t enroll into the system at all.
Hand geometry
- Hand is placed on a reflective surface
- Hand is lit by some light source (e.g. bright LED)
- a camera and some mirrors are used to gather images of several parts of the hand from several angles
- the template consists of measurements extracted from the image
Retina scanning
- was available before iris scanning
- good (e.g. low) far
- a low intensity light source is used to scan the vascular pattern
Other techniques
- voice verification
- signature verification
- vein pattern scanning
- scent
- keystroke patterns
Use
- artifical intelligence
- autonomic systems should interact with human, recognize and interpret
- facial expressions as essential component
- civil authentification
- drivers licence, credit cards, access
- inconspicuous, good acceptance by users expected
- question: reliability, frontiers (twins)
- identification in delinquency (crime)
- cameras, automatical identification of suspects
- support search for missing persons
Scenario
- controlled environment
- uniform head position, cooperative users, good
image quality
- uncontrolled environment
- face has to be found, position, orientation, size, illumination (shadows), bakground, are variable and have to be compensated
- facial expression (laughing) has big influence
- face partially hidden, beard, hairstyle, glasses, hat can hide parts of the facial information
- injuries, holiday, age change the face
Definition of Features
- before identification
- face has to be found and separated from the background
- separating background and illumination are big problems
- manual definition of features
- calculation of features often not reliable
- amount of manually defined features too small to separate different people
- immense variety of features has to be expected
Generating Templates
comparison
- different procedures are used
- general:
- byte-comparison of two templates
- use of algorithms (vector operations)
- grade of similarity
- if within tolerance then identical
- algorithms:
- template matching
- elastical bunch graph matching
- geometrical features
- “eigenfaces”
Template Matching
- similarity between image and template is calculated
- template: for whole face or parts (eye, mouth, nose)
- unknown face is compared with all that were saved
- problems
- mask has to match for a lot of faces
- a lot of time necessary, quality depends from mask
Elastic Bunch Graph Matching
- Labeled Graph (LG): nodes at certain parts of face (nose, mouth,..); universal face graph
- Bunch Graph (BG): every node gets different features as a subgraph (specializing the LG)
- Facial Recognition: find face, find certain parts, calculate BG and compare graphs
- save useful variation
Deformable Templates
- analyze face with geometrical figures
- alignment, shape, size, but also especially the position of the elements to each other
- samples (templates) are adapted to concrete face
- notes
- Templates comparable with LG; has to be adapted to concrete face
- Extraction of edges necessary; not very reliable
Recognition with geometrical features
- geometrical features are extracted from face
- simple extraction, difficult classification
- possible features
- horizontal and vertical projection of parts (eyes,nose, . . .)
- position, central point, width, thickness, radius of parts of the face
"Eigenfaces"
- beginning: amount of faces:
- 1. mean value calculation of the sample faces
- 2. mean value from step 1 subtracted from every sample face
- 3. “Kovarianzmatrix” calculation of normalized images from step 2
- 4. mathematical procedure gives optimal base of Eigenfaces
- base for effizient facial recognition / data compression
- condition: all faces to be recognized were trained before and represented: (calculation of “Eigenfaces-Base”)
- recognition of an image
- projection into “Eigenfaces-Base”
- Comparison of resulting values
- assign to registered face (person) thats value is next to
- problem: classify unknown faces
3D Recognition
- Features:
- developed in israel
- further development at Siemens/Munich
- “contoured face mask” is built up
- superior quality compared with 2D images
- very fast and reliable
- does not care about the position of the face
- How it works:
- project coloured lines
- at varying heights no straight lines
- position of each pixel is calculated to geometric data
- (3D Image at precision of 0.2 x 0.2 x 0.2mm within 40 ms)
- image analysed by using classical recognition methods
- ! more secure
- ! impossible to cheat the system by placing a photo in front of the camera
Summary
- Evaluation and Comparison
- feature based approaches
- can handle different orientations of faces
- manual definition of features
- automatical extraction of features / classification not very reliable
- appearance based approaches
- for every view separate image of the person is necessary
- simple to realize, automatical feature extraction
- feature based approaches
Insights on Fingerprints
- Features found on fingers
- Acquisition of fingerprints
- Recognition of fingerprints
- Some demonstration
- Problems of fingerprints
Classification of fingerprints
In the Henry system of fingerprint classification there are five different classes of fingerprints:
- Right Loop
- Left Loop
- Whorl
- Arch
- Tented Arch
The frequency of each class seems to vary with ethnic origin: Europeans have mostly loops, Pygmies and African bush men mostly have archs and Orientals have plenty of whorls.
Minutiae
Different types of minutiae:
- endings
- bifurcations
Devices
There’s a plethora of different sensor types:
- capacitive
- optical (several principles)
- thermic
- ultrasonic
- pressure
Acquisition methodology: touching vs. sweeping
typical extraction flow
- fingerprint image
- binarization
- thinning
- minutiae extraction
- post processing
- minutiae