Authors
Darius Afchar, Vincent Nozick, Junichi Yamagishi, Isao Echizen
Publication date
2018/12/11
Conference
2018 IEEE international workshop on information forensics and security (WIFS)
Pages
1-7
Publisher
IEEE
Description
This paper presents a method to automatically and efficiently detect face tampering in videos, and particularly focuses on two recent techniques used to generate hyper-realistic forged videos: Deepfake and Face2Face. Traditional image forensics techniques are usually not well suited to videos due to the compression that strongly degrades the data. Thus, this paper follows a deep learning approach and presents two networks, both with a low number of layers to focus on the mesoscopic properties of images. We evaluate those fast networks on both an existing dataset and a dataset we have constituted from online videos. The tests demonstrate a very successful detection rate with more than 98% for Deepfake and 95% for Face2Face.
Total citations
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Scholar articles
D Afchar, V Nozick, J Yamagishi, I Echizen - 2018 IEEE international workshop on information …, 2018