CVSep 12, 2018

Thermal Features for Presentation Attack Detection in Hand Biometrics

arXiv:1809.04364v11 citations
Originality Incremental advance
AI Analysis

This addresses security vulnerabilities in biometric systems for applications like access control, though it is incremental as it builds on existing thermal and DCNN methods.

The paper tackles presentation attack detection in hand biometrics by using thermal features, achieving 100% correct detection of fake thermal samples with 0% error rates and up to 99.75% rank-1 recognition accuracy in a closed-set system.

This paper proposes a method for utilizing thermal features of the hand for the purpose of presentation attack detection (PAD) that can be employed in a hand biometrics system's pipeline. By envisaging two different operational modes of our system, and by employing a DCNN-based classifiers fine-tuned with a dataset of real and fake hand representations captured in both visible and ther- mal spectrum, we were able to bring two important deliverables. First, a PAD method operating in an open-set mode, capable of correctly discerning 100% of fake thermal samples, achieving Attack Presentation Classification Error Rate (APCER) and Bona-Fide Presentation Classification Error Rate (BPCER) equal to 0%, which can be easily implemented into any existing system as a separate component. Second, a hand biometrics system operating in a closed-set mode, that has PAD built right into the recognition pipeline, and operating simultaneously with the user-wise classification, achieving rank-1 recognition accuracy of up to 99.75%. We also show that thermal images of the human hand, in addition to liveness features they carry, can also improve classification accuracy of a biometric system, when coupled with visible light images. To follow the reproducibility guidelines and to stimulate further research in this area, we share the trained model weights, source codes, and a newly created dataset of fake hand representations with interested researchers.

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