ELEGANCE: Efficient LLM Guidance for Audio-Visual Target Speech Extraction
By: Wenxuan Wu , Shuai Wang , Xixin Wu and more
Potential Business Impact:
Helps computers hear the right voice in noisy rooms.
Audio-visual target speaker extraction (AV-TSE) models primarily rely on visual cues from the target speaker. However, humans also leverage linguistic knowledge, such as syntactic constraints, next word prediction, and prior knowledge of conversation, to extract target speech. Inspired by this observation, we propose ELEGANCE, a novel framework that incorporates linguistic knowledge from large language models (LLMs) into AV-TSE models through three distinct guidance strategies: output linguistic constraints, intermediate linguistic prediction, and input linguistic prior. Comprehensive experiments with RoBERTa, Qwen3-0.6B, and Qwen3-4B on two AV-TSE backbones demon- strate the effectiveness of our approach. Significant improvements are observed in challenging scenarios, including visual cue impaired, unseen languages, target speaker switches, increased interfering speakers, and out-of-domain test set. Demo page: https://alexwxwu.github.io/ELEGANCE/.
Similar Papers
Incorporating Linguistic Constraints from External Knowledge Source for Audio-Visual Target Speech Extraction
Sound
Helps computers hear one voice in noisy rooms.
Leveraging Language Information for Target Language Extraction
Audio and Speech Processing
Lets computers hear one language in noisy crowds.
$C^2$AV-TSE: Context and Confidence-aware Audio Visual Target Speaker Extraction
Sound
Helps computers hear one voice in noisy rooms.