Inspector for Face Forgery Detection: Defending Against Adversarial Attacks From Coarse to Fine

Ruiyang Xia;Dawei Zhou;Decheng Liu;Jie Li;Lin Yuan;Nannan Wang;Xinbo Gao
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Abstract

The emergence of face forgery has raised global concerns on social security, thereby facilitating the research on automatic forgery detection. Although current forgery detectors have demonstrated promising performance in determining authenticity, their susceptibility to adversarial perturbations remains insufficiently addressed. Given the nuanced discrepancies between real and fake instances are essential in forgery detection, previous defensive paradigms based on input processing and adversarial training tend to disrupt these discrepancies. For the detectors, the learning difficulty is thus increased, and the natural accuracy is dramatically decreased. To achieve adversarial defense without changing the instances as well as the detectors, a novel defensive paradigm called Inspector is designed specifically for face forgery detectors. Specifically, Inspector defends against adversarial attacks in a coarse-to-fine manner. In the coarse defense stage, adversarial instances with evident perturbations are directly identified and filtered out. Subsequently, in the fine defense stage, the threats from adversarial instances with imperceptible perturbations are further detected and eliminated. Experimental results across different types of face forgery datasets and detectors demonstrate that our method achieves state-of-the-art performances against various types of adversarial perturbations while better preserving natural accuracy. Code is available on https://github.com/xarryon/Inspector .
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人脸伪造检测检查员:从粗到细抵御对抗性攻击
人脸伪造现象的出现引发了全球对社会安全的关注,从而促进了对自动伪造检测的研究。尽管目前的伪造检测器在判断真伪方面表现出了良好的性能,但它们易受对抗性扰动影响的问题仍未得到充分解决。鉴于真假实例之间的细微差别对伪造检测至关重要,以往基于输入处理和对抗训练的防御范式往往会破坏这些差异。对于检测器来说,学习难度会因此增加,自然准确率也会大大降低。为了在不改变实例和检测器的情况下实现对抗性防御,我们专门为人脸伪造检测器设计了一种名为 Inspector 的新型防御范式。具体来说,Inspector 以从粗到细的方式防御对抗性攻击。在粗略防御阶段,具有明显扰动的对抗实例会被直接识别并过滤掉。然后,在精细防御阶段,进一步检测和消除来自不易察觉扰动的对抗实例的威胁。在不同类型的人脸伪造数据集和检测器上的实验结果表明,我们的方法在对抗各种类型的对抗性扰动的同时,还能更好地保持自然准确性,达到了最先进的性能。代码见 https://github.com/xarryon/Inspector。
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