IEEE Signal Processing Letters | 2021

TransRPPG: Remote Photoplethysmography Transformer for 3D Mask Face Presentation Attack Detection

 
 
 
 

Abstract


3D mask face presentation attack detection (PAD) plays a vital role in securing face recognition systems from emergent 3D mask attacks. Recently, remote photoplethysmography (rPPG) has been developed as an intrinsic liveness clue for 3D mask PAD without relying on the mask appearance. However, the rPPG features for 3D mask PAD are still needed expert knowledge to design manually, which limits its further progress in the deep learning and big data era. In this letter, we propose a pure rPPG transformer (TransRPPG) framework for learning intrinsic liveness representation efficiently. At first, rPPG-based multi-scale spatial-temporal maps (MSTmap) are constructed from facial skin and background regions. Then the transformer fully mines the global relationship within MSTmaps for liveness representation, and gives a binary prediction for 3D mask detection. Comprehensive experiments are conducted on two benchmark datasets to demonstrate the efficacy of the TransRPPG on both intra- and cross-dataset testings. Our TransRPPG is lightweight and efficient (with only 547\xa0K parameters and 763\xa0M FLOPs), which is promising for mobile-level applications.

Volume 28
Pages 1290-1294
DOI 10.1109/LSP.2021.3089908
Language English
Journal IEEE Signal Processing Letters

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