Study of Generative Adversarial Networks for Acoustic Signal Enhancement: A Review

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Abstract

Acoustic signals enhancement is an important research topic. It has many applications like cochlear implants, speech and speaker recognition, hearing aids, mobile phones etc. The signals processed by these system are always susceptible to noises. Hence, algorithms are required to extract clean signal from noisy ones. Nowadays , deep neural network are the most sought after tool for signal enhancement. Generative Adversarial Network(GAN) is also one of the recent approaches applied to signal enhancement domain. More work is performed by GANs in image and video processing. To the best of my knowledge no review work on the usage of GANs for acoustic signal enhancement have been done. This paper is a review on the use of GANs for acoustical signals enhancement where speech signal is used as acoustic signal. The paper provides in a summarized manner about the basic GAN architectures and its limitations, feature sets used as input to GAN, limitations, performance evaluation measures and future directions.
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声信号增强的生成对抗网络研究综述
声信号增强是一个重要的研究课题。它有许多应用,如人工耳蜗、语音和说话人识别、助听器、手机等。这些系统处理的信号总是容易受到噪声的影响。因此,需要从噪声信号中提取干净信号的算法。目前,深度神经网络是最受欢迎的信号增强工具。生成对抗网络(GAN)也是近年来应用于信号增强领域的方法之一。gan在图像和视频处理方面做了更多的工作。据我所知,还没有关于gan用于声信号增强的综述工作。本文综述了gan在声信号增强中的应用,其中语音信号作为声信号。本文概述了GAN的基本架构及其局限性,作为GAN输入的特征集,局限性,性能评估措施和未来方向。
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