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Main Authors: Niu, Shu-Tong, Du, Jun, Wang, Ruo-Yu, Yang, Gao-Bin, Gao, Tian, Pan, Jia, Hu, Yu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.06667
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author Niu, Shu-Tong
Du, Jun
Wang, Ruo-Yu
Yang, Gao-Bin
Gao, Tian
Pan, Jia
Hu, Yu
author_facet Niu, Shu-Tong
Du, Jun
Wang, Ruo-Yu
Yang, Gao-Bin
Gao, Tian
Pan, Jia
Hu, Yu
contents We propose a single-channel Deep Cascade Fusion of Diarization and Separation (DCF-DS) framework for back-end automatic speech recognition (ASR), combining neural speaker diarization (NSD) and speech separation (SS). First, we sequentially integrate the NSD and SS modules within a joint training framework, enabling the separation module to leverage speaker time boundaries from the diarization module effectively. Then, to complement DCF-DS training, we introduce a window-level decoding scheme that allows the DCF-DS framework to handle the sparse data convergence instability (SDCI) problem. We also explore using an NSD system trained on real datasets to provide more accurate speaker boundaries. Additionally, we incorporate an optional multi-input multi-output speech enhancement module (MIMO-SE) within the DCF-DS framework, which offers further performance gains. Finally, we enhance diarization results by re-clustering DCF-DS outputs, improving ASR accuracy. By incorporating the DCF-DS method, we achieved first place in the realistic single-channel track of the CHiME-8 NOTSOFAR-1 challenge. We also perform the evaluation on the open LibriCSS dataset, achieving a new state-of-the-art single-channel speech recognition performance.
format Preprint
id arxiv_https___arxiv_org_abs_2411_06667
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DCF-DS: Deep Cascade Fusion of Diarization and Separation for Speech Recognition under Realistic Single-Channel Conditions
Niu, Shu-Tong
Du, Jun
Wang, Ruo-Yu
Yang, Gao-Bin
Gao, Tian
Pan, Jia
Hu, Yu
Audio and Speech Processing
Sound
We propose a single-channel Deep Cascade Fusion of Diarization and Separation (DCF-DS) framework for back-end automatic speech recognition (ASR), combining neural speaker diarization (NSD) and speech separation (SS). First, we sequentially integrate the NSD and SS modules within a joint training framework, enabling the separation module to leverage speaker time boundaries from the diarization module effectively. Then, to complement DCF-DS training, we introduce a window-level decoding scheme that allows the DCF-DS framework to handle the sparse data convergence instability (SDCI) problem. We also explore using an NSD system trained on real datasets to provide more accurate speaker boundaries. Additionally, we incorporate an optional multi-input multi-output speech enhancement module (MIMO-SE) within the DCF-DS framework, which offers further performance gains. Finally, we enhance diarization results by re-clustering DCF-DS outputs, improving ASR accuracy. By incorporating the DCF-DS method, we achieved first place in the realistic single-channel track of the CHiME-8 NOTSOFAR-1 challenge. We also perform the evaluation on the open LibriCSS dataset, achieving a new state-of-the-art single-channel speech recognition performance.
title DCF-DS: Deep Cascade Fusion of Diarization and Separation for Speech Recognition under Realistic Single-Channel Conditions
topic Audio and Speech Processing
Sound
url https://arxiv.org/abs/2411.06667