An Overview of Speech Enhancement Based on Deep Learning Techniques

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-07-22 DOI:10.1142/s0219467825500019
Chaitanya Jannu, S. Vanambathina
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Abstract

Recent years have seen a significant amount of studies in the area of speech enhancement. This review looks at several speech improvement methods as well as Deep Neural Network (DNN) functions in speech enhancement. Speech transmissions are frequently distorted by ambient noise, background noise, and reverberations. There are processing methods, such as Short-time Fourier Transform, Short-time Autocorrelation, and Short-time Energy (STE), that can be used to enhance speech. To reduce speech noise, features such as the Mel-Frequency Cepstral Coefficients (MFCCs), Logarithmic Power Spectrum (LPS), and Gammatone Frequency Cepstral Coefficients (GFCCs) can be retrieved and input to a DNN. DNN is essential to speech improvement since it builds models using a lot of training data and evaluates the efficacy of the enhanced speech using certain performance metrics. Since the beginning of deep learning publications in 1993, a variety of speech enhancement methods have been examined in this study. This review provides a thorough examination of the several neural network topologies, training algorithms, activation functions, training targets, acoustic features, and databases that were employed for the job of speech enhancement and were gathered from various articles published between 1993 and 2022.
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基于深度学习技术的语音增强综述
近年来,在语音增强领域进行了大量的研究。本文综述了几种语音增强方法以及深度神经网络(DNN)在语音增强中的作用。语音传输经常受到环境噪声、背景噪声和混响的干扰。有短时傅里叶变换、短时自相关和短时能量(STE)等处理方法可用于增强语音。为了降低语音噪声,可以检索Mel-Frequency Cepstral系数(MFCCs),对数功率谱(LPS)和gamma - one Frequency Cepstral系数(GFCCs)等特征并将其输入到DNN中。深度神经网络对语音改进至关重要,因为它使用大量训练数据构建模型,并使用某些性能指标评估增强语音的效果。自1993年深度学习出版物开始以来,本研究对各种语音增强方法进行了研究。本文对1993年至2022年间发表的各种文章中用于语音增强工作的几种神经网络拓扑、训练算法、激活函数、训练目标、声学特征和数据库进行了全面的研究。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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