SDLGASNov 11, 2022

Optimal Condition Training for Target Source Separation

arXiv:2211.05927v17 citationsh-index: 46
Originality Incremental advance
AI Analysis

This work addresses the problem of isolating specific sound sources from mixtures for audio processing applications, representing an incremental improvement over existing methods.

The paper tackles target source separation by proposing an optimal condition training method that uses multiple semantic concepts to improve separation efficiency, achieving state-of-the-art performance in text-based source separation and outperforming dedicated models.

Recent research has shown remarkable performance in leveraging multiple extraneous conditional and non-mutually exclusive semantic concepts for sound source separation, allowing the flexibility to extract a given target source based on multiple different queries. In this work, we propose a new optimal condition training (OCT) method for single-channel target source separation, based on greedy parameter updates using the highest performing condition among equivalent conditions associated with a given target source. Our experiments show that the complementary information carried by the diverse semantic concepts significantly helps to disentangle and isolate sources of interest much more efficiently compared to single-conditioned models. Moreover, we propose a variation of OCT with condition refinement, in which an initial conditional vector is adapted to the given mixture and transformed to a more amenable representation for target source extraction. We showcase the effectiveness of OCT on diverse source separation experiments where it improves upon permutation invariant models with oracle assignment and obtains state-of-the-art performance in the more challenging task of text-based source separation, outperforming even dedicated text-only conditioned models.

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