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

Henil Gajjar, Trushti Selarka, A. Lakdawala, Dhaval B. Shah, P. N. Kapil
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Abstract

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.
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用于噪声抑制的各种深度学习模型的比较分析
语音通信系统中的噪声过大是影响远程会议和助听器系统等多个领域的一个主要问题。为解决这一问题,人们提出了各种深度学习模型,其中基于自动编码器的模型效果显著。本文比较分析了四种不同的基于深度学习的自动编码器模型,即用于语音信号噪声抑制的 "阿尔法 "模型、"贝塔 "模型、"伽马 "模型和 "德尔塔 "模型。我们采用均方误差(MSE)这一客观指标对每个模型的性能进行了评估。实验结果表明,"阿尔法 "模型的性能优于其他模型,其最小误差为 0.0086,最大误差为 0.0158。gamma "模型也表现出色,最小误差为 0.0169,最大误差为 0.0216。这些研究结果表明,提出的模型在增强各领域的语音通信系统方面具有巨大潜力。
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