Interpretable and Trustworthy Deepfake Detection via Dynamic Prototypes

Loc Trinh, Michael Tsang, Sirisha Rambhatla, Yan Liu
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引用次数: 47

Abstract

In this paper we propose a novel human-centered approach for detecting forgery in face images, using dynamic prototypes as a form of visual explanations. Currently, most state-of-the-art deepfake detections are based on black-box models that process videos frame-by-frame for inference, and few closely examine their temporal inconsistencies. However, the existence of such temporal artifacts within deepfake videos is key in detecting and explaining deepfakes to a supervising human. To this end, we propose Dynamic Prototype Network (DPNet) – an interpretable and effective solution that utilizes dynamic representations (i.e., prototypes) to explain deepfake temporal artifacts. Extensive experimental results show that DPNet achieves competitive predictive performance, even on unseen testing datasets such as Google’s DeepFakeDetection, DeeperForensics, and Celeb-DF, while providing easy referential explanations of deepfake dynamics. On top of DPNet’s prototypical framework, we further formulate temporal logic specifications based on these dynamics to check our model’s compliance to desired temporal behaviors, hence providing trustworthiness for such critical detection systems.
基于动态原型的可解释和可信深度伪造检测
在本文中,我们提出了一种新的以人为中心的方法来检测人脸图像中的伪造,使用动态原型作为视觉解释的一种形式。目前,大多数最先进的深度伪造检测都是基于黑箱模型,这些模型逐帧处理视频进行推理,很少有人仔细检查它们的时间不一致性。然而,在深度伪造视频中存在这种时间伪影是检测和向监督人员解释深度伪造的关键。为此,我们提出了动态原型网络(DPNet)——一种可解释且有效的解决方案,它利用动态表示(即原型)来解释深度时间工件。大量的实验结果表明,DPNet即使在未见过的测试数据集(如Google的DeepFakeDetection、DeeperForensics和Celeb-DF)上也能实现具有竞争力的预测性能,同时提供了对deepfake动态的简单参考解释。在DPNet的原型框架之上,我们进一步制定了基于这些动态的时间逻辑规范,以检查我们的模型是否符合所需的时间行为,从而为此类关键检测系统提供可信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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