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Biometric Authentication : International ECCV 2002 Workshop Copenhagen, Denmark, June 1, 2002 Proceedings / edited by Massimo Tistarelli, Josef Bigun, Anil K. Jain.

LIBRA Q341 .P7 2004
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Format:
Book
Contributor:
Tistarelli, Massimo, 1962- editor.
Bigün, Josef, editor.
Jain, Anil K., 1948- editor.
SpringerLink (Online service)
Series:
Computer Science (Springer-11645)
Lecture notes in computer science 0302-9743 ; 2359.
Lecture Notes in Computer Science, 0302-9743 ; 2359
Language:
English
Subjects (All):
Optical data processing.
Pattern perception.
Natural language processing (Computer science).
Computers and civilization.
Management information systems.
Computer science.
Bioinformatics.
Image Processing and Computer Vision.
Pattern Recognition.
Natural Language Processing (NLP).
Computers and Society.
Management of Computing and Information Systems.
Local Subjects:
Image Processing and Computer Vision.
Pattern Recognition.
Natural Language Processing (NLP).
Computers and Society.
Management of Computing and Information Systems.
Bioinformatics.
Physical Description:
1 online resource (X, 202 pages).
Edition:
First edition 2002.
Contained In:
Springer eBooks
Place of Publication:
Berlin, Heidelberg : Springer Berlin Heidelberg : Imprint: Springer, 2002.
System Details:
text file PDF
Summary:
Biometric authentication refers to identifying an individual based on his or her distinguishing physiological and/or behavioral characteristics. It associates an individual with a previously determined identity based on that individual s appearance or behavior. Because many physiological or behavioral characteristics (biometric indicators) are distinctive to each person, biometric identifiers are inherently more reliable and more capable than knowledge-based (e.g., password) and token-based (e.g., a key) techniques in differentiating between an authorized person and a fraudulent impostor. For this reason, more and more organizations are looking to automated identity authentication systems to improve customer satisfaction, security, and operating efficiency as well as to save critical resources. Biometric authentication is a challenging pattern recognition problem; it involves more than just template matching. The intrinsic nature of biometric data must be carefully studied, analyzed, and its properties taken into account in developing suitable representation and matching algorithms. The intrinsic variability of data with time and environmental conditions, the social acceptability and invasiveness of acquisition devices, and the facility with which the data can be counterfeited must be considered in the choice of a biometric indicator for a given application. In order to deploy a biometric authentication system, one must consider its reliability, accuracy, applicability, and efficiency. Eventually, it may be necessary to combine several biometric indicators (multimodal-biometrics) to cope with the drawbacks of the individual biometric indicators.
Contents:
Face Recognition I
An Incremental Learning Algorithm for Face Recognition
Face Recognition Based on ICA Combined with FLD
Understanding Iconic Image-Based Face Biometrics
Fusion of LDA and PCA for Face Verification
Fingerprint Recognition
Complex Filters Applied to Fingerprint Images Detecting Prominent Symmetry Points Used for Alignment
Fingerprint Matching Using Feature Space Correlation
Fingerprint Minutiae: A Constructive Definition
Psychology and Biometrics
Pseudo-entropy Similarity for Human Biometrics
Mental Characteristics of Person as Basic Biometrics
Face Detection and Localization
Detection of Frontal Faces in Video Streams
Genetic Model Optimization for Hausdorff Distance-Based Face Localization
Coarse to Fine Face Detection Based on Skin Color Adaption
Face Recognition II
Robust Face Recognition Using Dynamic Space Warping
Subspace Classification for Face Recognition
Gait and Signature Analysis
Gait Appearance for Recognition
View-invariant Estimation of Height and Stride for Gait Recognition
Improvement of On-line Signature Verification System Robust to Intersession Variability
Classifiers for Recognition
Biometric Identification in Forensic Cases According to the Bayesian Approach
A New Quadratic Classifier Applied to Biometric Recognition.
Other Format:
Printed edition:
ISBN:
978-3-540-47917-8
9783540479178
Access Restriction:
Restricted for use by site license.

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