A Comparative Analysis of Various Deep-Learning Models for Noise Suppression

Excessive noise in speech communication systems is a major issue affecting various fields, including teleconferencing and hearing aid systems. To tackle this issue, various deep-learning models have been proposed, with autoencoder-based models showing remarkable results. In this paper, we present a...

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Bibliographic Details
Published inEAI endorsed transactions on internet of things Vol. 10
Main Authors Gajjar, Henil, Selarka, Trushti, Lakdawala, Absar M., Shah, Dhaval B., Kapil, P. N.
Format Journal Article
LanguageEnglish
Published 2024
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Summary:Excessive noise in speech communication systems is a major issue affecting various fields, including teleconferencing and hearing aid systems. To tackle this issue, various deep-learning models have been proposed, with autoencoder-based models showing remarkable results. In this paper, we present a comparative analysis of four different deep learning based autoencoder models, namely model ‘alpha’, model ‘beta’, model ‘gamma’, and model ‘delta’ for noise suppression in speech signals. The performance of each model was evaluated using objective metric, mean squared error (MSE). Our experimental results showed that the model ‘alpha’ outperformed the other models, achieving a minimum error of 0.0086 and maximum error of 0.0158. The model ‘gamma’ also performed well, with a minimum error of 0.0169 and maximum error of 0.0216. These findings suggest that the pro-posed models have great potential for enhancing speech communication systems in various fields.
ISSN:2414-1399
2414-1399
DOI:10.4108/eetiot.4502