首页> 外文期刊>IETE Journal of Research >A Comparative Study of the Techniques for Decomposition of EMG Signals
【24h】

A Comparative Study of the Techniques for Decomposition of EMG Signals

机译:肌电信号分解技术的比较研究

获取原文
获取原文并翻译 | 示例
           

摘要

This paper deals with four decomposition algorithms, which have been modified, implemented, analyzed and evaluated, for their performance in separation of motor unit action potentials (MUAPs) from the Electromyogram (EMG) Signals. The performance of algorithms has been evaluated to determine, as to which one out of the four algorithms is accurate, fast, reliable, efficient and can extract clean MUAPs even from those EMG signals which have been recorded for limited duration. Both synthetic and real time EMG signals have been used for testing the algorithms. The classification success rate achieved with statistical pattern recognition and cross-correlation approaches is 98.9% and 98.8% respectively whereas with Kohonen neural network 99.2% and wavelet transform 99.8%. Therefore the wavelet transform method is recommended because of its highest success rate, as this method does not require any correction for baseline drift or high frequency moise. It allows fast extraction of the localized frequency components, provides good time-resolution, and is capable of tracking rapid changes in MUAPs. The superimposed signal, which could not be separated by one of the above technique, has been decomposed by using cross-correlation and Euclidean distance. For earlier three techniques, the results are given only In tabular form while for wavelet technique, the results are presented both in tabular and graphical forms. All the algorithms have been successfully implemented and tested for decomposition of EMG signals recorded from subjects having normal (NOR) state of muscles and having motor neuron disorder (MND) and myopathy (MYO) disease. Keywods signal; decomposition; motor unit action potential (MUAP); statistical; cross-correlation; kohonen neural-network; wavelet
机译:本文针对四种分解算法进行了修改,实施,分析和评估,这些算法在分离肌电信号(EMG)信号中的运动单位动作电位(MUAP)方面表现出色。对算法的性能进行了评估,以确定四种算法中的哪一种是准确,快速,可靠,高效的,甚至可以从已记录有限时间的那些EMG信号中提取干净的MUAP。合成和实时EMG信号都已用于测试算法。统计模式识别和互相关方法实现的分类成功率分别为98.9%和98.8%,而Kohonen神经网络的分类成功率为99.2%,小波变换为99.8%。因此,由于小波变换方法的成功率最高,因此推荐使用它,因为该方法不需要对基线漂移或高频噪声进行任何校正。它允许快速提取局部频率分量,提供良好的时间分辨率,并能够跟踪MUAP中的快速变化。通过使用互相关和欧几里得距离已经分解了不能通过上述技术之一分离的叠加信号。对于较早的三种技术,结果仅以表格形式给出,而对于小波技术,结果以表格和图形形式给出。所有算法均已成功实施并测试了从具有正常(NOR)肌肉状态以及运动神经元疾病(MND)和肌病(MYO)疾病的受试者记录的EMG信号的分解。按键信号;分解;运动单位动作电位(MUAP);统计;互相关kohonen神经网络小波

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号