论文标题

DeepFake检测:从可靠性的角度进行全面调查

Deepfake Detection: A Comprehensive Survey from the Reliability Perspective

论文作者

Wang, Tianyi, Liao, Xin, Chow, Kam Pui, Lin, Xiaodong, Wang, Yinglong

论文摘要

互联网上流传的蘑菇深泡沫合成材料对全世界的政客,名人和个人产生了深远的社会影响。在这项调查中,我们从可靠性的角度进行了对现有的DeepFake检测研究的详尽回顾。我们确定了当前深层检测域中的三个面向可靠性的研究挑战:可转移性,可解释性和鲁棒性。此外,尽管经常针对这三个挑战解决了解决方案,但几乎没有考虑过检测模型的一般可靠性,导致在现实生活中缺乏可靠的证据,甚至是针对法庭上与Deepfake相关案件的起诉。因此,我们使用统计随机抽样知识和公开可用的基准数据集介绍了模型可靠性研究指标,以查看对任意Deepfake候选嫌疑人的现有检测模型的可靠性。进一步执行案例研究,以证明借助本调查中综述的可靠合格的检测模型,以证明包括不同的受害者群体的真实案例。对现有方法的评论和实验为深泡检测提供了丰富的讨论和未来的研究方向。

The mushroomed Deepfake synthetic materials circulated on the internet have raised a profound social impact on politicians, celebrities, and individuals worldwide. In this survey, we provide a thorough review of the existing Deepfake detection studies from the reliability perspective. We identify three reliability-oriented research challenges in the current Deepfake detection domain: transferability, interpretability, and robustness. Moreover, while solutions have been frequently addressed regarding the three challenges, the general reliability of a detection model has been barely considered, leading to the lack of reliable evidence in real-life usages and even for prosecutions on Deepfake-related cases in court. We, therefore, introduce a model reliability study metric using statistical random sampling knowledge and the publicly available benchmark datasets to review the reliability of the existing detection models on arbitrary Deepfake candidate suspects. Case studies are further executed to justify the real-life Deepfake cases including different groups of victims with the help of the reliably qualified detection models as reviewed in this survey. Reviews and experiments on the existing approaches provide informative discussions and future research directions for Deepfake detection.

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