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Heterogeneity Aware Deep Embedding for Mobile Periocular Recognition

About

Mobile biometric approaches provide the convenience of secure authentication with an omnipresent technology. However, this brings an additional challenge of recognizing biometric patterns in unconstrained environment including variations in mobile camera sensors, illumination conditions, and capture distance. To address the heterogeneous challenge, this research presents a novel heterogeneity aware loss function within a deep learning framework. The effectiveness of the proposed loss function is evaluated for periocular biometrics using the CSIP, IMP and VISOB mobile periocular databases. The results show that the proposed algorithm yields state-of-the-art results in a heterogeneous environment and improves generalizability for cross-database experiments.

Rishabh Garg, Yashasvi Baweja, Soumyadeep Ghosh, Mayank Vatsa, Richa Singh, Nalini Ratha• 2018

Related benchmarks

TaskDatasetResultRank
Periocular RecognitionVISOB Database (Experiment 1)
Rank-1 Acc98.47
36
Periocular RecognitionVISOB (iPhone in daylight)
EER1.32
5
Mobile Periocular IdentificationCSIP cross-sensor
Rank-1 Accuracy89.53
4
Mobile Periocular IdentificationCSIP cross-illumination
Rank-1 Accuracy87.33
4
Mobile Periocular VerificationCSIP cross-sensor
GAR @ 0.1% FAR18.23
4
Mobile Periocular VerificationCSIP cross-illumination
GAR (FAR=0.1%)14.53
4
Periocular RecognitionIMP
GAR @ FAR=10%82.97
4
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