Generalizable Deepfake Detection With Phase-Based Motion Analysis

Ekta Prashnani;Michael Goebel;B. S. Manjunath
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Abstract

We propose PhaseForensics, a DeepFake (DF) video detection method that uses a phase-based motion representation of facial temporal dynamics. Existing methods that rely on temporal information across video frames for DF detection have many advantages over the methods that only utilize the per-frame features. However, these temporal DF detection methods still show limited cross-dataset generalization and robustness to common distortions due to factors such as error-prone motion estimation, inaccurate landmark tracking, or the susceptibility of the pixel intensity-based features to adversarial distortions and the cross-dataset domain shifts. Our key insight to overcome these issues is to leverage the temporal phase variations in the band-pass frequency components of a face region across video frames. This not only enables a robust estimate of the temporal dynamics in the facial regions, but is also less prone to cross-dataset variations. Furthermore, we show that the band-pass filters used to compute the local per-frame phase form an effective defense against the perturbations commonly seen in gradient-based adversarial attacks. Overall, with PhaseForensics, we show improved distortion and adversarial robustness, and state-of-the-art cross-dataset generalization, with 92.4% video-level AUC on the challenging CelebDFv2 benchmark (a recent state of-the-art method, FTCN, compares at 86.9%).
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利用基于相位的运动分析进行可通用的深度伪装检测
我们提出了相位取证,这是一种使用面部时间动态的基于相位的运动表示的DeepFake (DF)视频检测方法。现有的依赖于跨视频帧的时间信息进行DF检测的方法比仅利用逐帧特征的方法有许多优点。然而,由于容易出错的运动估计、不准确的地标跟踪或基于像素强度的特征对对抗性扭曲和跨数据集域移位的敏感性等因素,这些时间DF检测方法仍然显示出有限的跨数据集泛化和对常见畸变的鲁棒性。我们克服这些问题的关键见解是利用视频帧中人脸区域带通频率分量的时间相位变化。这不仅可以对面部区域的时间动态进行稳健的估计,而且也不容易出现跨数据集变化。此外,我们表明,用于计算局部每帧相位的带通滤波器形成了对基于梯度的对抗性攻击中常见的扰动的有效防御。总体而言,通过phasefrensics,我们展示了改进的失真和对抗性鲁棒性,以及最先进的跨数据集泛化,在具有挑战性的CelebDFv2基准上具有92.4%的视频级AUC(最近最先进的方法FTCN的AUC为86.9%)。
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