Integrating Audio-Visual Features For Multimodal Deepfake Detection
Sneha Muppalla, Shan Jia, Siwei Lyu
Abstract
Deepfakes are AI-generated media in which an image or video has been digitally modified. The advancements made in deepfake technology have led to privacy and security issues. Most deepfake detection techniques rely on the detection of a single modality. Existing methods for audio-visual detection do not always surpass that of the analysis based on single modalities. Therefore, this paper proposes an audio visual based method for deepfake detection, which integrates fine-grained deepfake identification with binary classification. We categorize the samples into four types by combining labels specific to each single modality. This method enhances the detection under intra-domain and cross-domain testing.
Topics & Concepts
Computer scienceAudio visualArtificial intelligenceHuman–computer interactionSpeech recognitionNatural language processingComputer visionPattern recognition (psychology)MultimediaDigital Media Forensic DetectionGenerative Adversarial Networks and Image Synthesis