biometrics
DESCRIPTION
it's all about biometrics authentication.....TRANSCRIPT
04/08/2023 1
By 07BCE095DIVYA SHAH
BIOMETRIC AUTHENTICATION
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Contents – biometric systems
1. Biometric identifiers2. Classification of biometrics methods3. Bio Introduction4. metric system architecture5. Performance evaluation6. Signature recognition7. Voice recognition8. Retinal scan9. Iris scan10. Face-scan and facial thermo gram11. Hand geometry
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Personal identification objects
Token-based: “something that you have”
Knowledge-based: “something that you know”
Biometrics-based: “something that you are”
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Definition of Biometrics
Any automatically measurable, robust and distinctive physical characteristic or personal
trait that can be used to identify an individual or verify the claimed identity
of an individual.
Biometrics is the automatic recognition of
a person using distinguishing traits
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Some applications
Financial security Physical access control, Benefits distribution, Customs and immigration, National ID systems, Voter and driver registration, Telecommunications
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Biometric identifiers
Universality Uniqueness Stability Collectability Performance Acceptability Forge resistance
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Classification of biometrics methods
Static
fingerprint retinal scan iris scan hand
geometry
Dynamic
signature recognition
speaker recognition
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Biometric system architecture
Basic modules of a biometric system
Data acquisition Feature extraction Matching Decision Storage
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Biometric system model
Raw data Extracted f eatures
template
Authentication decision
Data collection Signal
processing
matching storage
score
decision Application
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Data acquisition module
Reads the biometric info from the user.
Examples: video camera, fingerprint scanner/sensor, microphone, etc.
All sensors in a given system must be similar to ensure recognition at any location.
Environmental conditions may affect their performance.
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Feature extraction module
Discriminating features extracted from the raw biometric data.
Raw data transformed into small set of bytes – storage and matching.
Various ways of extracting the features.
Pre-processing of raw data usually necessary.
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Matching module
The core of the biometric system.
Measures the similarity of the claimant’s sample with a reference template.
Typical methods: distance metrics, probabilistic measures, neural networks, etc.
The result: a number known as match score.
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Storage module Maintains the templates for enrolled
users.
One or more templates for each user.
The templates may be stored in: a special component in the biometric
device, conventional computer database, portable memories such as smartcards.
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Possible decision outcomes
A genuine individual is accepted.
A genuine individual is rejected (error).
An impostor is rejected.
An impostor is accepted (error).
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Biometric technologies
Signature recognition Voice recognition Retinal scan Iris scan Face biometrics Hand geometry
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Signature recognition
Variety of characteristics can be used
› angle of the pen› pressure of the pen› total signing time› velocity and acceleration› geometry
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Fingerprint recognition
Ridge patterns on fingers uniquely identify people.
Classification scheme devised in 1890s.
Major features: arch, loop, whorl.
Each fingerprint has at least one of the major features and many ‘small’ features.
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Eye biometric
Retina Back inside of the eye ball.
Pattern of blood vessels used for identification.
Iris colored portion of the eye surrounding the pupil.
complex iris pattern used for identification.
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Speaker recognition
Linguistic and speaker dependent acoustic patterns.
Speaker’s patterns reflect: anatomy (size and shape of mouth and
throat), behavioral (voice pitch, speaking style).
Heavy signal processing involved (spectral analysis, periodicity, etc)
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Face-scan and Facial Thermograms
Static controlled or dynamic uncontrolled shots.
Visible spectrum or infrared (thermo grams).
Non-invasive, hands-free, and widely accepted.
Questionable discriminatory capability.
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Hand geometry
Features: Dimensions and shape of
the hand, fingers, and knuckles as well as their relative locations.
Two images taken: One from the top and
one from the side.
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Thank you