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Feature extraction for a Slepian-Wolf biometric system using LDPC codes
83
Citations
9
References
2008
Year
Unknown Venue
EngineeringBiometric PrivacyInformation SecurityBiometricsVerificationFeature ExtractionInformation ForensicsTemplate ProtectionFingerprint AnalysisPersonal BiometricsHardware SecurityData SciencePattern RecognitionBiostatisticsSoft BiometricsAuthentication ProtocolIdentity-based SecurityData PrivacyComputer ScienceData SecurityCryptographySecure BiometricsLdpc Syndrome Coding
We present an information-theoretically secure biometric storage system using graph-based error correcting codes in a Slepian-Wolf coding framework. Our architecture is motivated by the noisy nature of personal biometrics and the requirement to provide security without storing the true biometric at the device. The principal difficulty is that real biometric signals, such as fingerprints, do not obey the i.i.d. or ergodic statistics that are required for the underlying typicality properties in the Slepian-Wolf coding framework. To meet this challenge, we propose to transform the biometric data into binary feature vectors that are i.i.d. Bernoulli(0.5), independent across different users, and related within the same user through a BSC-p channel with small p< 0.5. Since this is a standard channel model for LDPC codes, the feature vectors are now suitable for LDPC syndrome coding. The syndromes serve as secure biometrics for access control. Experiments on a fingerprint database demonstrate that the system is information-theoretically secure, and achieves very low false accept rates and low false reject rates.
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