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

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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 dataset for this task has constrained algorithm evaluations with respect to data diversity, environments, and accuracy. This has made comparisons and improvements difficult. In this paper, we present the AVA Active Speaker detection dataset (AVA-ActiveSpeaker) that will be released publicly to facilitate algorithm development and enable comparisons. The dataset 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 or about 38.5 hours of face tracks, and the corresponding audio. We also present a new audio-visual approach for active speaker detection, and analyze its performance, demonstrating both its strength and the contributions of the dataset.

Joseph Roth, Sourish Chaudhuri, Ondrej Klejch, Radhika Marvin, Andrew Gallagher, Liat Kaver, Sharadh Ramaswamy, Arkadiusz Stopczynski, Cordelia Schmid, Zhonghua Xi, Caroline Pantofaru• 2019

Related benchmarks

TaskDatasetResultRank
Active Speaker DetectionAVA-ActiveSpeaker (val)
mAP86.3
107
Active Speaker DetectionAVA-ActiveSpeaker v1.0 (val)
mAP82.2
27
Active Speaker DetectionAVA-ActiveSpeaker (test)
mAP82.1
22
Active Speaker DetectionAVA-ActiveSpeaker v1.0 (test)
mAP82.1
13
Active Speaker DetectionAVA-ActiveSpeaker ActivityNet Challenge 2019 (test)
mAP82.1
9
Active Speaker DetectionTalkies 1.0 (test)
mAP71.5
4
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