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Arbitrary Talking Face Generation via Attentional Audio-Visual Coherence Learning

Hao Zhu, Huaibo Huang, Yi Li, Aihua Zheng, Ran He

202040 citationsDOIOpen Access PDF

Abstract

Talking face generation aims to synthesize a face video with precise lip synchronization as well as a smooth transition of facial motion over the entire video via the given speech clip and facial image. Most existing methods mainly focus on either disentangling the information in a single image or learning temporal information between frames. However, cross-modality coherence between audio and video information has not been well addressed during synthesis. In this paper, we propose a novel arbitrary talking face generation framework by discovering the audio-visual coherence via the proposed Asymmetric Mutual Information Estimator (AMIE). In addition, we propose a Dynamic Attention (DA) block by selectively focusing the lip area of the input image during the training stage, to further enhance lip synchronization. Experimental results on benchmark LRW dataset and GRID dataset transcend the state-of-the-art methods on prevalent metrics with robust high-resolution synthesizing on gender and pose variations.

Topics & Concepts

Computer scienceCoherence (philosophical gambling strategy)Artificial intelligenceFace (sociological concept)Computer visionSynchronization (alternating current)Benchmark (surveying)Focus (optics)GridSpeech recognitionVisualizationFacial recognition systemPattern recognition (psychology)GeodesySocial sciencePhysicsMathematicsGeometrySociologyGeographyQuantum mechanicsOpticsComputer networkChannel (broadcasting)Face recognition and analysisSpeech and Audio ProcessingGenerative Adversarial Networks and Image Synthesis
Arbitrary Talking Face Generation via Attentional Audio-Visual Coherence Learning | Litcius