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DeFakePro: Decentralized Deepfake Attacks Detection Using ENF Authentication

Deeraj Nagothu, Ronghua Xu, Yu Chen, Erik Blasch, Alexander Aved

2022IT Professional28 citationsDOIOpen Access PDF

Abstract

Advancements in generative models, such as deepfake, allow users to imitate a targeted person and manipulate online interactions. It has been recognized that disinformation may cause disturbance in society and ruin the foundation of trust. This article presents DeFakePro, a decentralized consensus mechanism-based deepfake detection technique in online video conferencing tools. Leveraging electrical network frequency (ENF), an environmental fingerprint embedded in digital media recording affords a consensus mechanism design called proof-of-ENF (PoENF) algorithm. The similarity in ENF signal fluctuations is utilized in the PoENF algorithm to authenticate the media broadcasted in conferencing tools. By utilizing the video conferencing setup with malicious participants to broadcast deepfake video recordings to other participants, the DeFakePro system verifies the authenticity of the incoming media in both audio and video channels.

Topics & Concepts

Computer scienceAuthentication (law)DisinformationMechanism (biology)Fingerprint (computing)VideoconferencingDigital watermarkingEcho (communications protocol)SIGNAL (programming language)Computer securityMultimediaArtificial intelligenceWorld Wide WebSocial mediaImage (mathematics)PhilosophyEpistemologyProgramming languageDigital Media Forensic DetectionAdvanced Steganography and Watermarking TechniquesGenerative Adversarial Networks and Image Synthesis
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