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Active Speaker Detection as a Multi-Objective Optimization with Uncertainty-based Multimodal Fusion

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It is now well established from a variety of studies that there is a significant benefit from combining video and audio data in detecting active speakers. However, either of the modalities can potentially mislead audiovisual fusion by inducing unreliable or deceptive information. This paper outlines active speaker detection as a multi-objective learning problem to leverage best of each modalities using a novel self-attention, uncertainty-based multimodal fusion scheme. Results obtained show that the proposed multi-objective learning architecture outperforms traditional approaches in improving both mAP and AUC scores. We further demonstrate that our fusion strategy surpasses, in active speaker detection, other modality fusion methods reported in various disciplines. We finally show that the proposed method significantly improves the state-of-the-art on the AVA-ActiveSpeaker dataset.

Baptiste Pouthier, Laurent Pilati, Leela K. Gudupudi, Charles Bouveyron, Frederic Precioso• 2021

Related benchmarks

TaskDatasetResultRank
Active Speaker DetectionAVA-ActiveSpeaker (val)
mAP91.9
107
Active Speaker DetectionAVA-ActiveSpeaker v1.0 (val)
mAP91.9
27
Active Speaker DetectionAVA-ActiveSpeaker v1.0 (test)
mAP89.5
13
Active Speaker DetectionAVA-ActiveSpeaker ActivityNet Challenge 2019 (test)
mAP89.5
9
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