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Autori principali: de Gibson, Louise Coppieters, Garner, Philip N., Honnet, Pierre-Edouard
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.05589
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author de Gibson, Louise Coppieters
Garner, Philip N.
Honnet, Pierre-Edouard
author_facet de Gibson, Louise Coppieters
Garner, Philip N.
Honnet, Pierre-Edouard
contents Whilst state of the art automatic speech recognition (ASR) can perform well, it still degrades when exposed to acoustic environments that differ from those used when training the model. Unfamiliar environments for a given model may well be known a-priori, but yield comparatively small amounts of adaptation data. In this experimental study, we investigate to what extent recent formalisations of modularity can aid adaptation of ASR to new acoustic environments. Using a conformer based model and fixed routing, we confirm that environment awareness can indeed lead to improved performance in known environments. However, at least on the (CHIME) datasets in the study, it is difficult for a classifier module to distinguish different noisy environments, a simpler distinction between noisy and clean speech being the optimal configuration. The results have clear implications for deploying large models in particular environments with or without a-priori knowledge of the environmental noise.
format Preprint
id arxiv_https___arxiv_org_abs_2409_05589
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle An investigation of modularity for noise robustness in conformer-based ASR
de Gibson, Louise Coppieters
Garner, Philip N.
Honnet, Pierre-Edouard
Audio and Speech Processing
Whilst state of the art automatic speech recognition (ASR) can perform well, it still degrades when exposed to acoustic environments that differ from those used when training the model. Unfamiliar environments for a given model may well be known a-priori, but yield comparatively small amounts of adaptation data. In this experimental study, we investigate to what extent recent formalisations of modularity can aid adaptation of ASR to new acoustic environments. Using a conformer based model and fixed routing, we confirm that environment awareness can indeed lead to improved performance in known environments. However, at least on the (CHIME) datasets in the study, it is difficult for a classifier module to distinguish different noisy environments, a simpler distinction between noisy and clean speech being the optimal configuration. The results have clear implications for deploying large models in particular environments with or without a-priori knowledge of the environmental noise.
title An investigation of modularity for noise robustness in conformer-based ASR
topic Audio and Speech Processing
url https://arxiv.org/abs/2409.05589