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Enhanced Neural Beamformer with Spatial Information for Target Speech Extraction

Authors :
Guo, Aoqi
Wu, Junnan
Gao, Peng
Zhu, Wenbo
Guo, Qinwen
Gao, Dazhi
Wang, Yujun
Publication Year :
2023

Abstract

Recently, deep learning-based beamforming algorithms have shown promising performance in target speech extraction tasks. However, most systems do not fully utilize spatial information. In this paper, we propose a target speech extraction network that utilizes spatial information to enhance the performance of neural beamformer. To achieve this, we first use the UNet-TCN structure to model input features and improve the estimation accuracy of the speech pre-separation module by avoiding information loss caused by direct dimensionality reduction in other models. Furthermore, we introduce a multi-head cross-attention mechanism that enhances the neural beamformer's perception of spatial information by making full use of the spatial information received by the array. Experimental results demonstrate that our approach, which incorporates a more reasonable target mask estimation network and a spatial information-based cross-attention mechanism into the neural beamformer, effectively improves speech separation performance.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.15942
Document Type :
Working Paper