Look Who’s Talking: Active Speaker Detection in the Wild
Abstract
In this work, we present a novel audio-visual dataset for active speaker detection in the wild. A speaker is considered active when his or her face is visible and the voice is audible simultaneously. Although active speaker detection is a crucial pre-processing step for many audio-visual tasks, there is no existing active speaker detection dataset to evaluate the performance using natural human speech. We therefore curate the Active Speakers in the Wild (ASW) dataset which contains videos and co-occurring speech segments with dense speech activity labels. Videos and timestamps of audible segments are parsed and adopted from VoxConverse, an existing speaker diarisation dataset that consists of videos in the wild. Face tracks are extracted from the videos and active segments are annotated based on the timestamps of VoxConverse in a semi-automatic way. Two reference systems, one is self-supervised and the other is supervised system, are evaluated on the dataset to provide the baseline performances of ASW. Cross-domain evaluation and case study are conducted, in order to show the negative effect of the dubbed videos that are excluded in ASW.