基于呼吸肌肌电信号的呼吸任务分类

A. Morali, A. Abdullah, Z. Zakaria, N. A. Rahim, V. Vijean, S. K. Nataraj
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引用次数: 3

摘要

呼吸是人体生理活动之一,尤其在医学诊断和人体生理性能研究领域引起了人们的广泛关注。除了传统的吸入或排出空气的测量方法外,还可以通过分析人体呼吸肌的肌电信号来评估呼吸特征。本研究在受试者执行四种不同的呼吸任务时,从胸锁乳突肌、斜角肌、肋间肌和横膈膜这四种呼吸肌获取人体呼吸的肌电图信号。目的是将肌肉的肌电图特征分为四种呼吸任务。采用前馈多层感知器人工神经网络(MLPANN)进行分类。从肌电数据中得到四个特征,即均方根(RMS)、过零(ZC)、平均频率(MNF)和平均频率功率(MP)。采用i) 4种数据分割帧大小和ii) 6个隐藏神经元个数,对肌电图的4个特征和3个特征组合集的输入向量的准确率结果进行分类比较。将所有特征集作为MLPANN的输入,分割帧大小为1000 ms,隐藏神经元数为60个时,数据分类的准确率最高。得到的分类准确率为59.52%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of human breathing task based on electromyography signal of respiratory muscles
Breathing is one of the human physiological activities that catch the interest of researchers especially in the area of medical diagnosis and human physiological performance. Apart from conventional measurement using intake or outflow of air, breathing characteristics could also be assessed through human respiratory muscles with the analysis on Electromyography (EMG) signal. In this paper, EMG signal of human breathing is acquired from four respiratory muscles i.e. sternocleidomastoid, scalene, intercostal muscle and diaphragm while subjects perform four different breathing tasks. The aim is to classify EMG features from the muscles into the four breathing tasks. Classification is done using Feedforward Multi-layer Perceptron Artificial Neural Network (MLPANN). Four features are derived from the EMG data i.e. root-mean-square (RMS), zero crossing (ZC), mean frequency (MNF) and mean frequency power (MP). Classification is performed to compare the accuracy result of input vector from the four features of EMG and three combination set of these features using i) four data segmentation frame sizes and ii) six number of hidden neurons. The result of data classification shows highest accuracy when all feature sets is used as input to MLPANN with segmentation frame size of 1000 ms and number of hidden neurons of 60. Classifation accuracy obtained is 59.52%.
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