Analysis of Audio Signals Using Deep Learning Algorithms Applied to COVID Diagnostic Systems

M. Rivera, P. M. Quintero-Flores, Rodolfo Eleazar Pérez Loaiza, Leticia Gómez Rivera
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Abstract

In recent years the application of deep learning algorithms in the subdomain of audio analysis has grown rapidly, however it is a topic that can be complex for students and researchers who have a first approach and want to develop an application in this field. The use of deep learning techniques applied to audio signals has allowed the development of a wide variety of useful tools in our daily lives, from virtual assistants to medical applications. This article presents a literature review of the main techniques that have been used in recent years for analysis, feature extraction and classification from audio spectra or spectrograms, as well as examples of application in the context of the COVID-19 pandemic in which multiple related projects have emerged, such as diagnostic systems. The techniques addressed are recurrent neural networks (RNN), convolutional neural networks (CNN) and generative adversarial networks (GAN). It is intended that the reader will be able to acquire this knowledge from a simple perspective and that this information will be useful in their research or development.
基于深度学习算法的音频信号分析应用于COVID诊断系统
近年来,深度学习算法在音频分析子领域的应用发展迅速,然而,对于初学者和想要在该领域开发应用的学生和研究人员来说,这是一个复杂的话题。将深度学习技术应用于音频信号,可以在我们的日常生活中开发出各种有用的工具,从虚拟助手到医疗应用。本文综述了近年来用于音频频谱或谱图分析、特征提取和分类的主要技术,并举例介绍了在新冠肺炎大流行背景下出现的多个相关项目(如诊断系统)的应用实例。讨论的技术是循环神经网络(RNN),卷积神经网络(CNN)和生成对抗网络(GAN)。它旨在使读者能够从一个简单的角度获得这些知识,并且这些信息将对他们的研究或开发有用。
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