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An enhanced Conv-TasNet model for speech separation using a speaker distance-based loss function

Authors :
Arango-Sánchez, Jose A.
Arias-Londoño, Julián D.
Publication Year :
2022

Abstract

This work addresses the problem of speech separation in the Spanish Language using pre-trained deep learning models. As with many speech processing tasks, large databases in other languages different from English are scarce. Therefore this work explores different training strategies using the Conv-TasNet model as a benchmark. A scale-invariant signal distortion ratio (SI-SDR) metric value of 9.9 dB was achieved for the best training strategy. Then, experimentally, we identified an inverse relationship between the speakers' similarity and the model's performance, so an improved ConvTasNet architecture was proposed. The enhanced Conv-TasNet model uses pre-trained speech embeddings to add a between-speakers cosine similarity term in the cost function, yielding an SI-SDR of 10.6 dB. Lastly, final experiments regarding real-time deployment show some drawbacks in the speakers' channel synchronization due to the need to process small speech segments where only one of the speakers appears.<br />Comment: https://github.com/DW-Speech-Separation/train-test-ConvTasNet

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.13657
Document Type :
Working Paper