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Supplementary Material: AVA-ActiveSpeaker: An Audio-Visual Dataset for Active Speaker Detection

Joseph Roth, Sourish Chaudhuri, Ondřej Klejch, Radhika Marvin, Andrew Gallagher, Liat Kaver, Sharadh Ramaswamy, Arkadiusz Stopczynski, Cordelia Schmid, Zhonghua Xi, Caroline Pantofaru

Year
2019
Citations
15

Abstract

Active speaker detection is an important component in video analysis algorithms for applications such as speaker diarization, video re-targeting for meetings, speech enhancement, and human-robot interaction. The absence of a large, carefully labeled audio-visual active speaker dataset has limited algorithm evaluation in terms of data diversity, environments, and accuracy. In this paper, we present the AVA Active Speaker detection dataset (AVA-ActiveSpeaker) which has been publicly released to facilitate algorithm development and comparison. It contains temporally labeled face tracks in video, where each face instance is labeled as speaking or not, and whether the speech is audible. This dataset contains about 3.65 million human labeled frames spanning 38.5 hours. We also introduce a state-of-the-art approach for real-time active speaker detection and compare several variants. This evaluation clearly demonstrates a significant gain due to audio-visual modeling and temporal integration over multiple frames.

Keywords

Computer scienceSpeaker diarisationSpeech recognitionAudio visualVoice activity detectionSpeaker recognitionFace (sociological concept)Artificial intelligencePattern recognition (psychology)Computer vision

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