A dual descriptor combined with frequency domain reconstruction learning for face forgery detection in deepfake videos

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Forensic Science International-Digital Investigation Pub Date : 2024-04-18 DOI:10.1016/j.fsidi.2024.301747
Xin Jin , Nan Wu , Qian Jiang , Yuru Kou , Hanxian Duan , Puming Wang , Shaowen Yao
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Abstract

Conventional face forgery detectors have primarily relied on image artifacts produced by deepfake video generation models. These methods have performed well when the training and test sets were derived from the same deepfake algorithm, but accuracy and generalizability remain a challenge for diverse datasets. In this study, both supervised and unsupervised approaches are proposed for more accurate detection in in-domain and cross-domain experiments. Specifically, two descriptors are introduced to extract rich information in the spatial domain to achieve higher accuracy. A frequency domain reconstruction module is then included to expand the representation space for facial features. A reconstruction method based on an auto-encoder was also applied to obtain a frequency domain coding vector. In this process, reconstruction learning was sufficient for extracting unknown information, while a combination with classification learning provided essential high-frequency pixel differences between real and fake samples, thus facilitating forgery identification. A series of validation experiments with large-scale benchmark datasets demonstrated that the proposed technique was superior to existing methods.

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结合频域重构学习的双描述符,用于深度伪造视频中的人脸伪造检测
传统的人脸伪造检测器主要依赖于深度伪造视频生成模型产生的图像伪影。当训练集和测试集来自相同的深度伪造算法时,这些方法表现良好,但对于不同的数据集,准确性和通用性仍是一个挑战。本研究提出了有监督和无监督两种方法,以便在域内和跨域实验中进行更精确的检测。具体来说,我们引入了两个描述符来提取空间域中的丰富信息,以达到更高的准确性。然后加入频域重建模块,以扩展面部特征的表示空间。此外,还应用了一种基于自动编码器的重构方法,以获得频域编码向量。在这一过程中,重构学习足以提取未知信息,而与分类学习相结合则提供了真假样本之间必不可少的高频像素差异,从而促进了伪造识别。利用大规模基准数据集进行的一系列验证实验表明,所提出的技术优于现有方法。
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来源期刊
CiteScore
5.90
自引率
15.00%
发文量
87
审稿时长
76 days
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