2020
DOI: 10.48550/arxiv.2003.04092
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Searching Central Difference Convolutional Networks for Face Anti-Spoofing

Abstract: Face anti-spoofing (FAS) plays a vital role in face recognition systems. Most state-of-the-art FAS methods 1) rely on stacked convolutions and expert-designed network, which is weak in describing detailed fine-grained information and easily being ineffective when the environment varies (e.g., different illumination), and 2) prefer to use long sequence as input to extract dynamic features, making them difficult to deploy into scenarios which need quick response. Here we propose a novel frame level FAS method ba… Show more

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Cited by 3 publications
(7 citation statements)
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“…In Table VI, we compare SSR-FCN with prior work. We find that our proposed method achieves significant improvement in comparison to the published results [20] (relative reduction of 14% on the average EER and 3% on the average ACER). Note that the standard deviation across all 13 spoof types is also reduced compared to prior approaches, even though some of them [1,20] utilize auxiliary data such as depth and temporal information.…”
Section: H Generalization Across Unknown Attacksmentioning
confidence: 59%
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“…In Table VI, we compare SSR-FCN with prior work. We find that our proposed method achieves significant improvement in comparison to the published results [20] (relative reduction of 14% on the average EER and 3% on the average ACER). Note that the standard deviation across all 13 spoof types is also reduced compared to prior approaches, even though some of them [1,20] utilize auxiliary data such as depth and temporal information.…”
Section: H Generalization Across Unknown Attacksmentioning
confidence: 59%
“…• We show that features learned from local face regions have better generalization ability than those learned from the entire face image alone. [20] under the unknown attack setting, and (ii) 40% on known spoofs. In addition, SSR-FCN achieves competitive performance on standard benchmarks on Oulu-NPU [18] dataset and outperforms prevailing methods on crossdataset generalization (CASIA-FASD [13] and Replay-Attack [12]).…”
Section: Our Contributions Are As Followsmentioning
confidence: 99%
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“…along with evident cues for detecting them, studies on anti-spoofs are more sophisticated. The associated JointCNN employs either auxiliary cues, such as depth map and heart pulse signals (rPPG) [37,56,67], or a "compactness" loss to prevent overfitting [19,45]. Recently Stehouwer et al [55] attempt to learn a spoof detector from imagery of generic objects and apply it to face anti-spoofing.…”
Section: Related Workmentioning
confidence: 99%