联合统计与因果特征调制人脸抗欺骗

Xin Dong, Tao Wang, Zhendong Li, Hao Liu
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引用次数: 0

摘要

在本文中,我们提出了一种分层特征调制(HFM)方法,用于不可见域和不可见攻击下的稳定人脸防欺骗。传统的基于多域的泛化方法由于学习范式的复杂性或启发式,容易导致局部最优。受高层语义干扰和低层杂项偏差共同导致分布偏移这一事实的启发,HFM旨在以分层方式调制细粒度特征。具体来说,我们用局部差分直方图(局部差分直方图)来补充结构特征,以缓解高级语义上的过拟合。我们进一步引入具有成像色彩模型的结构因果模型(SCM),揭示了呈现介质和捕捉设备从低层次上破坏了与活度相关的信息。因此,我们将这种隐藏的纠缠建模为分布混合问题,并提出基于期望最大化(EM)的因果干预来消除这些杂项。在公共数据集上的实验结果证明了HFM的有效性,特别是在非分布情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Statistical and Causal Feature Modulated Face Anti-Spoofing
In this paper, we propose a hierarchical feature modulation (HFM) approach for stable face anti-spoofing in unseen domains and unseen attacks. The conventional multi-domain based generalizable approaches likely lead to local optima due to the complicated or heuristic learning paradigm. Inspired by the fact that high-level semantic disturbances and low-level miscellaneous bias jointly cause the distribution shift, HFM aims to modulate the fine-grained feature in a hierarchical manner. Specifically, we complement the structural feature with patch-wise learnable statistical information, i.e. local difference histogram, to relieve the overfitting on high-level semantics. We further introduce the structural causal model (SCM) with imaging color model to reveal that presenting mediums and capturing devices destroy the liveness-relevant information from the low level. Thus we model this hidden entanglement as a distribution mixture problem and propose the expectation-maximization (EM) based causal intervention to remove these miscellanies. Experimental results on public datasets demonstrate the effectiveness of HFM, especially in out-of-distribution settings.
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