CVMMSDASDec 7, 2022

iQuery: Instruments as Queries for Audio-Visual Sound Separation

Tsinghua
arXiv:2212.03814v243 citationsh-index: 57
Originality Highly original
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This addresses the challenge of generalizing to new instruments in audio-visual separation, offering a more efficient approach compared to standard methods that require full retraining.

The paper tackles the problem of audio-visual sound separation by proposing iQuery, which uses instruments as queries with a flexible expansion mechanism, improving performance on three benchmarks.

Current audio-visual separation methods share a standard architecture design where an audio encoder-decoder network is fused with visual encoding features at the encoder bottleneck. This design confounds the learning of multi-modal feature encoding with robust sound decoding for audio separation. To generalize to a new instrument: one must finetune the entire visual and audio network for all musical instruments. We re-formulate visual-sound separation task and propose Instrument as Query (iQuery) with a flexible query expansion mechanism. Our approach ensures cross-modal consistency and cross-instrument disentanglement. We utilize "visually named" queries to initiate the learning of audio queries and use cross-modal attention to remove potential sound source interference at the estimated waveforms. To generalize to a new instrument or event class, drawing inspiration from the text-prompt design, we insert an additional query as an audio prompt while freezing the attention mechanism. Experimental results on three benchmarks demonstrate that our iQuery improves audio-visual sound source separation performance.

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