Face Presentation Attack Detection Based on a Statistical Model of Image Noise

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Abstract

The vulnerability of most existing face recognition and authentication systems against face presentation attacks (a.k.a. face spoofing attacks) has been mentioned and studied in many works. This paper introduces a novel parametric approach for face PAD using a statistical model of image noise. In fact, facial images from a presentation attack contain specific textural information caused by the presentation process which makes them different from bona-fide images. The subtle difference between bona-fide and presentation attack images can be interpreted by the difference regarding noise statistics within the skin zone of the face. Our solution is casted in the hypothesis testing framework. A new database for face PAD containing face bona-fide images and images of high-quality presentation attacks has been also introduced. The performance of the proposed approach was proven in the mentioned database. Experimental results show that, in a controlled situation, our solution performs better than the other approaches in the literature.

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CITATION STYLE

APA

Nguyen, H. P., Delahaies, A., Retraint, F., & Morain-Nicolier, F. (2019). Face Presentation Attack Detection Based on a Statistical Model of Image Noise. IEEE Access, 7, 175429–175442. https://doi.org/10.1109/ACCESS.2019.2957273

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