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Main Authors: Wang, Hongyu, Li, Chenda, Zhou, Xin, Wang, Shuai, Qian, Yanmin
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.21215
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author Wang, Hongyu
Li, Chenda
Zhou, Xin
Wang, Shuai
Qian, Yanmin
author_facet Wang, Hongyu
Li, Chenda
Zhou, Xin
Wang, Shuai
Qian, Yanmin
contents Sound separation (SS) and target sound extraction (TSE) are fundamental techniques for addressing complex acoustic scenarios. While existing SS methods struggle with determining the unknown number of sound sources, TSE approaches require precisely specified clues to achieve optimal performance. This paper proposes a unified framework that synergistically combines SS and TSE to overcome their individual limitations. Our architecture employs two complementary components: 1) An Encoder-Decoder Attractor (EDA) network that automatically infers both the source count and corresponding acoustic clues for SS, and 2) A multi-modal fusion network that precisely interprets diverse user-provided clues (acoustic, semantic, or visual) for TSE. Through joint training with cross-task consistency constraints, we establish a unified latent space that bridges both paradigms. During inference, the system adaptively operates in either fully autonomous SS mode or clue-driven TSE mode. Experiments demonstrate remarkable performance in both tasks, with notable improvements of 1.4 dB SDR improvement in SS compared to baseline and 86\% TSE accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21215
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle USE: A Unified Model for Universal Sound Separation and Extraction
Wang, Hongyu
Li, Chenda
Zhou, Xin
Wang, Shuai
Qian, Yanmin
Audio and Speech Processing
Sound separation (SS) and target sound extraction (TSE) are fundamental techniques for addressing complex acoustic scenarios. While existing SS methods struggle with determining the unknown number of sound sources, TSE approaches require precisely specified clues to achieve optimal performance. This paper proposes a unified framework that synergistically combines SS and TSE to overcome their individual limitations. Our architecture employs two complementary components: 1) An Encoder-Decoder Attractor (EDA) network that automatically infers both the source count and corresponding acoustic clues for SS, and 2) A multi-modal fusion network that precisely interprets diverse user-provided clues (acoustic, semantic, or visual) for TSE. Through joint training with cross-task consistency constraints, we establish a unified latent space that bridges both paradigms. During inference, the system adaptively operates in either fully autonomous SS mode or clue-driven TSE mode. Experiments demonstrate remarkable performance in both tasks, with notable improvements of 1.4 dB SDR improvement in SS compared to baseline and 86\% TSE accuracy.
title USE: A Unified Model for Universal Sound Separation and Extraction
topic Audio and Speech Processing
url https://arxiv.org/abs/2512.21215