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3DPC-Net: 3D Point Cloud Network for Face Anti-spoofing | IEEE Conference Publication | IEEE Xplore

3DPC-Net: 3D Point Cloud Network for Face Anti-spoofing


Abstract:

Face anti-spoofing plays a vital role in face recognition systems. Most deep learning-based methods directly use 2D images assisted with temporal information (i.e., motio...Show More

Abstract:

Face anti-spoofing plays a vital role in face recognition systems. Most deep learning-based methods directly use 2D images assisted with temporal information (i.e., motion, rPPG) or pseudo-3D information (i.e., Depth). The main drawback of the mentioned methods is that another extra network is needed to generate the depth/rPPG information to assist the backbone network for face anti-spoofing. Different from these methods, we propose a novel method named 3D Point Cloud Network (3DPC-Net). It is an encoder-decoder network that can predict the 3DPC maps to discriminate live faces from spoofing ones. The main traits of the proposed method are that: 1) It is the first time that 3DPC is used for face anti-spoofing; 2) 3DPC-Net is simple and effective and it only relies on 3DPC supervision. Extensive experiments on four databases (i.e., Oulu-NPU, SiW, CASIA-FASD, Replay Attack) have demonstrated that the 3DPC-Net is comparative to the state-of-the-art methods.
Date of Conference: 28 September 2020 - 01 October 2020
Date Added to IEEE Xplore: 06 January 2021
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Conference Location: Houston, TX, USA

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