Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

STHG: Spatial-Temporal Heterogeneous Graph Learning for Advanced Audio-Visual Diarization

About

This report introduces our novel method named STHG for the Audio-Visual Diarization task of the Ego4D Challenge 2023. Our key innovation is that we model all the speakers in a video using a single, unified heterogeneous graph learning framework. Unlike previous approaches that require a separate component solely for the camera wearer, STHG can jointly detect the speech activities of all people including the camera wearer. Our final method obtains 61.1% DER on the test set of Ego4D, which significantly outperforms all the baselines as well as last year's winner. Our submission achieved 1st place in the Ego4D Challenge 2023. We additionally demonstrate that applying the off-the-shelf speech recognition system to the diarized speech segments by STHG produces a competitive performance on the Speech Transcription task of this challenge.

Kyle Min• 2023

Related benchmarks

TaskDatasetResultRank
Active Speaker DetectionAVA-ActiveSpeaker
mAP94.9
11
Active Speaker DetectionEgo4D Audio-Visual benchmark
mAP63.7
9
Showing 2 of 2 rows

Other info

Follow for update