FakeCatcher: Detection of Synthetic Portrait Videos using Biological Signals.

IF 20.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Umur Aybars Ciftci, Ilke Demir, Lijun Yin
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引用次数: 0

Abstract

The recent proliferation of fake portrait videos poses direct threats on society, law, and privacy [1]. Believing the fake video of a politician, distributing fake pornographic content of celebrities, fabricating impersonated fake videos as evidence in courts are just a few real world consequences of deep fakes. We present a novel approach to detect synthetic content in portrait videos, as a preventive solution for the emerging threat of deep fakes. In other words, we introduce a deep fake detector. We observe that detectors blindly utilizing deep learning are not effective in catching fake content, as generative models produce formidably realistic results. Our key assertion follows that biological signals hidden in portrait videos can be used as an implicit descriptor of authenticity, because they are neither spatially nor temporally preserved in fake content. To prove and exploit this assertion, we first engage several signal transformations for the pairwise separation problem, achieving 99.39% accuracy. Second, we utilize those findings to formulate a generalized classifier for fake content, by analyzing proposed signal transformations and corresponding feature sets. Third, we generate novel signal maps and employ a CNN to improve our traditional classifier for detecting synthetic content. Lastly, we release an "in the wild" dataset of fake portrait videos that we collected as a part of our evaluation process. We evaluate FakeCatcher on several datasets, resulting with 96%, 94.65%, 91.50%, and 91.07% accuracies, on Face Forensics [2], Face Forensics++ [3], CelebDF [4], and on our new Deep Fakes Dataset respectively. In addition, our approach produces a significantly superior detection rate against baselines, and does not depend on the source, generator, or properties of the fake content. We also analyze signals from various facial regions, under image distortions, with varying segment durations, from different generators, against unseen datasets, and under several dimensionality reduction techniques.

FakeCatcher:使用生物信号检测合成肖像视频
近年来,虚假肖像视频的泛滥对社会、法律和隐私造成了直接威胁[1]。相信政客的虚假视频、传播名人的虚假色情内容、编造冒充的虚假视频作为法庭证据,这些都是深度造假在现实世界中造成的后果。我们提出了一种检测肖像视频中合成内容的新方法,作为应对深度造假这一新兴威胁的预防性解决方案。换句话说,我们引入了深度伪造检测器。我们发现,盲目利用深度学习的检测器并不能有效捕捉虚假内容,因为生成模型会产生非常逼真的结果。我们的关键论断是,隐藏在人像视频中的生物信号可用作真实性的隐式描述符,因为它们在虚假内容中既没有空间上的保留,也没有时间上的保留。为了证明和利用这一论断,我们首先针对成对分离问题采用了几种信号变换,达到了 99.39% 的准确率。其次,我们利用这些发现,通过分析提出的信号变换和相应的特征集,制定了一个针对虚假内容的通用分类器。第三,我们生成了新的信号图,并利用 CNN 改进了用于检测合成内容的传统分类器。最后,我们发布了一个 "野生 "伪造肖像视频数据集,该数据集是我们在评估过程中收集的。我们在多个数据集上对 FakeCatcher 进行了评估,结果在 Face Forensics [2]、Face Forensics++ [3]、CelebDF [4] 和新的 Deep Fakes 数据集上的准确率分别为 96%、94.65%、91.50% 和 91.07%。此外,我们的方法的检测率明显优于基准方法,而且不依赖于假冒内容的来源、生成器或属性。我们还分析了来自不同面部区域的信号、图像失真情况下的信号、不同片段持续时间下的信号、不同生成器的信号、未见数据集的信号以及多种降维技术的信号。
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来源期刊
CiteScore
28.40
自引率
3.00%
发文量
885
审稿时长
8.5 months
期刊介绍: The IEEE Transactions on Pattern Analysis and Machine Intelligence publishes articles on all traditional areas of computer vision and image understanding, all traditional areas of pattern analysis and recognition, and selected areas of machine intelligence, with a particular emphasis on machine learning for pattern analysis. Areas such as techniques for visual search, document and handwriting analysis, medical image analysis, video and image sequence analysis, content-based retrieval of image and video, face and gesture recognition and relevant specialized hardware and/or software architectures are also covered.
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