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EffCRN: An Efficient Convolutional Recurrent Network for High-Performance Speech Enhancement

Authors :
Sach, Marvin
Franzen, Jan
Defraene, Bruno
Fluyt, Kristoff
Strake, Maximilian
Tirry, Wouter
Fingscheidt, Tim
Publication Year :
2023

Abstract

Fully convolutional recurrent neural networks (FCRNs) have shown state-of-the-art performance in single-channel speech enhancement. However, the number of parameters and the FLOPs/second of the original FCRN are restrictively high. A further important class of efficient networks is the CRUSE topology, serving as reference in our work. By applying a number of topological changes at once, we propose both an efficient FCRN (FCRN15), and a new family of efficient convolutional recurrent neural networks (EffCRN23, EffCRN23lite). We show that our FCRN15 (875K parameters) and EffCRN23lite (396K) outperform the already efficient CRUSE5 (85M) and CRUSE4 (7.2M) networks, respectively, w.r.t. PESQ, DNSMOS and DeltaSNR, while requiring about 94% less parameters and about 20% less #FLOPs/frame. Thereby, according to these metrics, the FCRN/EffCRN class of networks provides new best-in-class network topologies for speech enhancement.<br />Comment: 5 pages, 5 figures, accepted for Interspeech 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.02778
Document Type :
Working Paper