English

DeFT-Mamba: Universal Multichannel Sound Separation and Polyphonic Audio Classification

Audio and Speech Processing 2025-09-12 v1 Sound

Abstract

This paper presents a framework for universal sound separation and polyphonic audio classification, addressing the challenges of separating and classifying individual sound sources in a multichannel mixture. The proposed framework, DeFT-Mamba, utilizes the dense frequency-time attentive network (DeFTAN) combined with Mamba to extract sound objects, capturing the local time-frequency relations through gated convolution block and the global time-frequency relations through position-wise Hybrid Mamba. DeFT-Mamba surpasses existing separation and classification networks by a large margin, particularly in complex scenarios involving in-class polyphony. Additionally, a classification-based source counting method is introduced to identify the presence of multiple sources, outperforming conventional threshold-based approaches. Separation refinement tuning is also proposed to improve performance further. The proposed framework is trained and tested on a multichannel universal sound separation dataset developed in this work, designed to mimic realistic environments with moving sources and varying onsets and offsets of polyphonic events.

Keywords

Cite

@article{arxiv.2409.12413,
  title  = {DeFT-Mamba: Universal Multichannel Sound Separation and Polyphonic Audio Classification},
  author = {Dongheon Lee and Jung-Woo Choi},
  journal= {arXiv preprint arXiv:2409.12413},
  year   = {2025}
}

Comments

5 pages, 2 figures

R2 v1 2026-06-28T18:49:43.761Z