State Key Laboratory of Integrated Services Networks, School of Cyber Engineering, Xidian University, Xi'an 710071, Shaanxi, PR China.
State Key Laboratory of Integrated Services Networks, School of Telecommunications Engineering, Xidian University, Xi'an 710071, Shaanxi, PR China.
Neural Netw. 2024 Dec;180:106636. doi: 10.1016/j.neunet.2024.106636. Epub 2024 Aug 14.
DeepFake detection is pivotal in personal privacy and public safety. With the iterative advancement of DeepFake techniques, high-quality forged videos and images are becoming increasingly deceptive. Prior research has seen numerous attempts by scholars to incorporate biometric features into the field of DeepFake detection. However, traditional biometric-based approaches tend to segregate biometric features from general ones and freeze the biometric feature extractor. These approaches resulted in the exclusion of valuable general features, potentially leading to a performance decline and, consequently, a failure to fully exploit the potential of biometric information in assisting DeepFake detection. Moreover, insufficient attention has been dedicated to scrutinizing gaze authenticity within the realm of DeepFake detection in recent years. In this paper, we introduce GazeForensics, an innovative DeepFake detection method that utilizes gaze representation obtained from a 3D gaze estimation model to regularize the corresponding representation within our DeepFake detection model, while concurrently integrating general features to further enhance the performance of our model. Experimental results demonstrate that our proposed GazeForensics method performs admirably in terms of performance and exhibits excellent interpretability.
深度伪造检测在个人隐私和公共安全方面至关重要。随着深度伪造技术的不断发展,高质量的伪造视频和图像变得越来越具有欺骗性。先前的研究已经有许多学者尝试将生物特征纳入深度伪造检测领域。然而,传统的基于生物特征的方法往往将生物特征与一般特征分开,并冻结生物特征提取器。这些方法排除了有价值的一般特征,可能导致性能下降,因此无法充分利用生物特征信息在辅助深度伪造检测方面的潜力。此外,近年来,在深度伪造检测领域,人们对注视真实性的关注还不够。在本文中,我们引入了 GazeForensics,这是一种创新的深度伪造检测方法,它利用从 3D 注视估计模型获得的注视表示来正则化我们的深度伪造检测模型中的相应表示,同时集成一般特征来进一步提高模型的性能。实验结果表明,我们提出的 GazeForensics 方法在性能方面表现出色,并具有出色的可解释性。