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Separate What You Describe: Language-Queried Audio Source Separation

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arxiv 2203.15147 v1 pith:DUW6C7QZ submitted 2022-03-28 eess.AS cs.AIcs.CLcs.SDeess.SP

Separate What You Describe: Language-Queried Audio Source Separation

classification eess.AS cs.AIcs.CLcs.SDeess.SP
keywords audiosourcelanguagelass-netseparatetargetachievesdataset
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we introduce the task of language-queried audio source separation (LASS), which aims to separate a target source from an audio mixture based on a natural language query of the target source (e.g., "a man tells a joke followed by people laughing"). A unique challenge in LASS is associated with the complexity of natural language description and its relation with the audio sources. To address this issue, we proposed LASS-Net, an end-to-end neural network that is learned to jointly process acoustic and linguistic information, and separate the target source that is consistent with the language query from an audio mixture. We evaluate the performance of our proposed system with a dataset created from the AudioCaps dataset. Experimental results show that LASS-Net achieves considerable improvements over baseline methods. Furthermore, we observe that LASS-Net achieves promising generalization results when using diverse human-annotated descriptions as queries, indicating its potential use in real-world scenarios. The separated audio samples and source code are available at https://liuxubo717.github.io/LASS-demopage.

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