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Continual Learning in Machine Speech Chain Using Gradient Episodic Memory

Authors :
Tyndall, Geoffrey
Azizah, Kurniawati
Tanaya, Dipta
Purwarianti, Ayu
Lestari, Dessi Puji
Sakti, Sakriani
Publication Year :
2024

Abstract

Continual learning for automatic speech recognition (ASR) systems poses a challenge, especially with the need to avoid catastrophic forgetting while maintaining performance on previously learned tasks. This paper introduces a novel approach leveraging the machine speech chain framework to enable continual learning in ASR using gradient episodic memory (GEM). By incorporating a text-to-speech (TTS) component within the machine speech chain, we support the replay mechanism essential for GEM, allowing the ASR model to learn new tasks sequentially without significant performance degradation on earlier tasks. Our experiments, conducted on the LJ Speech dataset, demonstrate that our method outperforms traditional fine-tuning and multitask learning approaches, achieving a substantial error rate reduction while maintaining high performance across varying noise conditions. We showed the potential of our semi-supervised machine speech chain approach for effective and efficient continual learning in speech recognition.<br />Comment: Published as a conference paper at O-COCOSDA 2024. 6 pages; 2 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.18320
Document Type :
Working Paper