ASCVSDMar 31, 2022

Speaker Extraction with Co-Speech Gestures Cue

arXiv:2203.16840v236 citations
AI Analysis

This work addresses speaker extraction for audio processing applications by introducing a novel cue, though it appears incremental as it builds on existing cue-based methods.

The paper tackles speaker extraction from multi-talker mixtures by using co-speech gestures as a cue, showing that this approach is informative for associating speech with the target speaker.

Speaker extraction seeks to extract the clean speech of a target speaker from a multi-talker mixture speech. There have been studies to use a pre-recorded speech sample or face image of the target speaker as the speaker cue. In human communication, co-speech gestures that are naturally timed with speech also contribute to speech perception. In this work, we explore the use of co-speech gestures sequence, e.g. hand and body movements, as the speaker cue for speaker extraction, which could be easily obtained from low-resolution video recordings, thus more available than face recordings. We propose two networks using the co-speech gestures cue to perform attentive listening on the target speaker, one that implicitly fuses the co-speech gestures cue in the speaker extraction process, the other performs speech separation first, followed by explicitly using the co-speech gestures cue to associate a separated speech to the target speaker. The experimental results show that the co-speech gestures cue is informative in associating with the target speaker.

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