Meta-Teacher For Face Anti-Spoofing
- URL: http://arxiv.org/abs/2111.06638v1
- Date: Fri, 12 Nov 2021 10:09:50 GMT
- Title: Meta-Teacher For Face Anti-Spoofing
- Authors: Yunxiao Qin, Zitong Yu, Longbin Yan, Zezheng Wang, Chenxu Zhao, Zhen
Lei
- Abstract summary: Face anti-spoofing (FAS) secures face recognition from presentation attacks (PAs)
We propose a novel Meta-Teacher FAS (MT-FAS) method to train a meta-teacher for supervising PA detectors more effectively.
- Score: 46.604960860807154
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Face anti-spoofing (FAS) secures face recognition from presentation attacks
(PAs). Existing FAS methods usually supervise PA detectors with handcrafted
binary or pixel-wise labels. However, handcrafted labels may are not the most
adequate way to supervise PA detectors learning sufficient and intrinsic
spoofing cues. Instead of using the handcrafted labels, we propose a novel
Meta-Teacher FAS (MT-FAS) method to train a meta-teacher for supervising PA
detectors more effectively. The meta-teacher is trained in a bi-level
optimization manner to learn the ability to supervise the PA detectors learning
rich spoofing cues. The bi-level optimization contains two key components: 1) a
lower-level training in which the meta-teacher supervises the detector's
learning process on the training set; and 2) a higher-level training in which
the meta-teacher's teaching performance is optimized by minimizing the
detector's validation loss. Our meta-teacher differs significantly from
existing teacher-student models because the meta-teacher is explicitly trained
for better teaching the detector (student), whereas existing teachers are
trained for outstanding accuracy neglecting teaching ability. Extensive
experiments on five FAS benchmarks show that with the proposed MT-FAS, the
trained meta-teacher 1) provides better-suited supervision than both
handcrafted labels and existing teacher-student models; and 2) significantly
improves the performances of PA detectors.
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