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Deep Audio-visual Learning: A Survey

Hao Zhu, Mandi Luo, Rui Wang, Aihua Zheng, Ran He

2021International Journal of Automation and Computing167 citationsDOIOpen Access PDF

Abstract

Abstract Audio-visual learning, aimed at exploiting the relationship between audio and visual modalities, has drawn considerable attention since deep learning started to be used successfully. Researchers tend to leverage these two modalities to improve the performance of previously considered single-modality tasks or address new challenging problems. In this paper, we provide a comprehensive survey of recent audio-visual learning development. We divide the current audio-visual learning tasks into four different subfields: audio-visual separation and localization, audio-visual correspondence learning, audio-visual generation, and audio-visual representation learning. State-of-the-art methods, as well as the remaining challenges of each subfield, are further discussed. Finally, we summarize the commonly used datasets and challenges.

Topics & Concepts

Audio visualModalitiesLeverage (statistics)Computer scienceModality (human–computer interaction)Deep learningVisualizationVisual learningArtificial intelligenceMultimediaSpeech recognitionHuman–computer interactionCognitive psychologyPsychologySocial scienceSociologySpeech and Audio ProcessingMusic and Audio ProcessingHearing Loss and Rehabilitation
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