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首页> 外文期刊>International Journal of Computer Trends and Technology >An Evolving Model of Voice Disorder Detection using Deep Belief Network
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An Evolving Model of Voice Disorder Detection using Deep Belief Network

机译:基于深信度网络的语音障碍检测演化模型

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摘要

In recent years, automatic diagnose of larynx pathological voice disorders are a challenging task in the medical filed. The researchers started focusing on working with voice signals to discover voice disorder related diseases. Machine learning plays a vital role in automatic detection of voice disorder using spectral information of recorded voice. Among several approaches deep playing has been in a prominent place for achieving significant results in the voice recognition field, where there has been less research work in the field of pathological voice detection. This paper introduces the deep belief network for discovering healthy and unhealthy voice detection. The stack of Restricted Boltzmann Machine is used to pretrain the deep neural networks. Simulation analysis is done to prove the proficiency of the deep belief networkbased voice disorder detection using the real data from the Saarbrucken Voice database..
机译:近年来,自动诊断喉部病理性语音障碍是医学领域的一项艰巨任务。研究人员开始专注于处理语音信号以发现与语音障碍相关的疾病。机器学习在使用记录的语音的频谱信息自动检测语音障碍中起着至关重要的作用。在几种方法中,深度播放一直在语音识别领域中取得显著成就的显着位置,而病理语音检测领域的研究工作却很少。本文介绍了用于发现健康和不健康语音检测的深度信念网络。受限玻尔兹曼机的堆栈用于预训练深度神经网络。通过使用Saarbrucken语音数据库中的真实数据进行仿真分析,以证明基于深度信念网络的语音障碍检测的能力。

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