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SIGPRO
2011

Extracting biometric binary strings with minimal area under the FRR curve for the hamming distance classifier

12 years 7 months ago
Extracting biometric binary strings with minimal area under the FRR curve for the hamming distance classifier
Quantizing real-valued templates into binary strings is a fundamental step in biometric compression and template protection. In this paper, we introduce the area under the FRR curve optimize bit allocation (AUF-OBA) principle. Given the bit error probability, AUF-OBA assigns the numbers of quantization bits to every feature, in such way that the analytical area under the false rejection rate (FRR) curve for a Hamming distance classifier (HDC) is minimized. Experiments on the FRGC face database yield good performances.
C. Chen, R. Veldhuis
Added 17 Sep 2011
Updated 17 Sep 2011
Type Journal
Year 2011
Where SIGPRO
Authors C. Chen, R. Veldhuis
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