Litcius/Paper detail

Deepfake Detection through Deep Learning

Deng Pan, Lixian Sun, Rui Wang, Xingjian Zhang, Richard Sinnott

2020161 citationsDOI

Abstract

Deepfakes allow for the automatic generation and creation of (fake) video content, e.g. through generative adversarial networks. Deepfake technology is a controversial technology with many wide reaching issues impacting society, e.g. election biasing. Much research has been devoted to developing detection methods to reduce the potential negative impact of deepfakes. Application of neural networks and deep learning is one approach. In this paper, we consider the deepfake detection technologies Xception and MobileNet as two approaches for classification tasks to automatically detect deepfake videos. We utilise training and evaluation datasets from FaceForensics++ comprising four datasets generated using four different and popular deepfake technologies. The results show high accuracy over all datasets with an accuracy varying between 91-98% depending on the deepfake technologies applied. We also developed a voting mechanism that can detect fake videos using the aggregation of all four methods instead of only one.

Topics & Concepts

Computer scienceArtificial intelligenceDeep learningAdversarial systemDeep neural networksMachine learningGenerative grammarVotingData scienceLawPoliticsPolitical scienceGenerative Adversarial Networks and Image SynthesisDigital Media Forensic DetectionAnomaly Detection Techniques and Applications