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Training Strategies and Data Augmentations in CNN-based DeepFake Video Detection

Luca Bondi, Edoardo Daniele Cannas, Paolo Bestagini, Stefano Tubaro

2020Virtual Community of Pathological Anatomy (University of Castilla La Mancha)82 citationsDOIOpen Access PDF

Abstract

The fast and continuous growth in number and quality of deepfake videos calls for the development of reliable de-tection systems capable of automatically warning users on social media and on the Internet about the potential untruthfulness of such contents. While algorithms, software, and smartphone apps are getting better every day in generating manipulated videos and swapping faces, the accuracy of automated systems for face forgery detection in videos is still quite limited and generally biased toward the dataset used to design and train a specific detection system. In this paper we analyze how different training strategies and data augmentation techniques affect CNN-based deepfake detectors when training and testing on the same dataset or across different datasets.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceQuality (philosophy)Training setFace (sociological concept)The InternetDetectorSoftwareMultimediaWorld Wide WebPhilosophyTelecommunicationsEpistemologySociologyProgramming languageSocial scienceDigital Media Forensic DetectionAdvanced Steganography and Watermarking TechniquesGenerative Adversarial Networks and Image Synthesis
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