Deepfake Detection Using Machine Learning Algorithms

M. Rana, B. Murali, A. Sung
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引用次数: 1

Abstract

Deepfake, a new video manipulation technique, has drawn much attention recently. Among the unlawful or nefarious applications, Deepfake has been used for spreading misinformation, fomenting political discord, smearing opponents, or even blackmailing. As the technology becomes more sophisticated and the apps for creating them ever more available, detecting Deepfake has become a challenging task, and accordingly researchers have proposed various deep learning (DL) methods for detection. Though the DL-based approach can achieve good solutions, this paper presents the results of our study indicating that traditional machine learning (ML) techniques alone can obtain superior performance in detecting Deepfake. The ML-based approach is based on the standard methods of feature development and feature selection, followed by training, tuning, and testing an ML classifier. The advantage of the ML approach is that it allows better understandability and interpretability of the model with reduced computational cost. We present results on several Deepfake datasets that are obtained relatively fast with comparable or superior performance to the state-of-the-art DL-based methods: 99.84% accuracy on FaceForecics++, 99.38% accuracy on DFDC, 99.66% accuracy on VDFD, and 99.43% on Celeb-DF datasets. Our results suggest that an effective system for detecting Deepfakes can be built using traditional ML methods.
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使用机器学习算法的深度伪造检测
Deepfake是一种新的视频处理技术,最近备受关注。在非法或恶意的应用程序中,Deepfake被用于传播错误信息,煽动政治不和,抹黑对手,甚至勒索。随着技术变得越来越复杂,用于创建它们的应用程序越来越多,检测Deepfake已经成为一项具有挑战性的任务,因此研究人员提出了各种深度学习(DL)检测方法。虽然基于dl的方法可以获得很好的解决方案,但本文提出的研究结果表明,仅使用传统的机器学习(ML)技术就可以在检测Deepfake方面获得更好的性能。基于ML的方法是基于特征开发和特征选择的标准方法,然后是训练、调优和测试ML分类器。ML方法的优点是它允许模型更好的可理解性和可解释性,同时减少了计算成本。我们展示了几个Deepfake数据集的结果,这些数据集获得的速度相对较快,性能与最先进的基于dl的方法相当或更好:faceforecic++的准确率为99.84%,DFDC的准确率为99.38%,VDFD的准确率为99.66%,Celeb-DF数据集的准确率为99.43%。我们的研究结果表明,可以使用传统的机器学习方法构建一个有效的检测深度伪造的系统。
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