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Long Short Term Memory Based Recurrent Neural Network for Wheezing Detection in Pulmonary Sounds

机译:基于长短时记忆的递归神经网络在肺音喘息检测中的应用

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This paper presents a new technique for wheezes detection in respiratory sounds using a Long Short-Term Memory (LSTM), a specific type of Recurrent Neural Networks (RNNs). The purpose of this work is to develop an LSTM-based system and compare its classification performances to those obtained by a Multilayer Perceptron (MLP) feed-forward network. The MLP is a widely used neural network that has proven its efficiency in respiratory sound classification. Feed-forward networks do not consider time dependencies, while RNNs reach their limit in detecting dependencies when they occur at long time intervals. Because wheezing occurs over several consecutive intervals, we assume that LSTM takes into account the changing characteristics better than MLP and provides better results. Pulmonary sounds are characterized using the Mel-Frequency Cepstral Coefficients (MFCC) method before applying the LSTM-based classifier. As expected, the experimental tests show that LSTM takes advantage of the long-term dependencies observed in wheezing sounds to lead to better classification performances (accuracy of 91%).
机译:本文提出了一种利用长短时记忆(LSTM)检测呼吸音中喘息的新技术,LSTM是一种特殊类型的递归神经网络(RNN)。本文的目的是开发一个基于LSTM的系统,并将其分类性能与多层感知器(MLP)前馈网络的分类性能进行比较。MLP是一种广泛使用的神经网络,已证明其在呼吸音分类中的有效性。前馈网络不考虑时间依赖性,而RNNs在检测依赖关系时达到它们的限制,当它们在长的时间间隔发生时。由于喘息发生在几个连续的时间间隔内,我们假设LSTM比MLP更好地考虑了变化特征,并提供了更好的结果。在应用基于LSTM的分类器之前,使用Mel频率倒谱系数(MFCC)方法对肺音进行表征。正如预期的那样,实验测试表明,LSTM利用了在喘息声中观察到的长期相关性,从而获得更好的分类性能(准确率为91%)。

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