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Artificial neural network based gait patterns identification using neuromuscular signals and soft tissue deformation analysis of lower limbs muscles

机译:利用神经肌肉信号和下肢肌肉软组织变形分析的基于人工神经网络的步态模式识别

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The objective of this study is to investigate the use of electromyography (EMG) signals and video based soft tissue deformation (STD) analysis for identifying the gait patterns of healthy and injured subjects. The system includes a wireless surface electromyography (EMG) sensor unit and two video camera systems for measuring the neuromuscular activity of lower limb muscles, and a custom-developed artificial neural network based intelligent system software for identifying the gait patterns of subjects during walking activity. The system uses root mean square (RMS) value of EMG signals and soft tissue deformation parameter (STDP) as the input features. In order to estimate the STD during a muscular contraction while walking, flexible triangular meshes are built on reference points. The positions of these selected points are evaluated by applying the block matching motion estimation technique. Based on the extracted features, multilayer feed-forward backpropagation networks (FFBPNNs) with different network training functions were designed and their classification performances were compared. The system has been tested for a group of healthy and injured subjects. The results showed that FFBPNN with Levenberg-Marquardt training function provided better prediction behavior (98% overall accuracy) as compared to FFBPNN with other training functions for gait patterns identification based on RMS value of EMG and STDP.
机译:这项研究的目的是调查使用肌电图(EMG)信号和基于视频的软组织变形(STD)分析来识别健康和受伤受试者的步态模式。该系统包括一个无线表面肌电(EMG)传感器单元和两个用于测量下肢肌肉神经肌肉活动的摄像机系统,以及一个定制开发的基于人工神经网络的智能系统软件,用于识别步行活动过程中受试者的步态模式。该系统使用EMG信号的均方根(RMS)值和软组织变形参数(STDP)作为输入特征。为了估计行走时肌肉收缩期间的性病,在参考点上建立了灵活的三角形网格。这些所选点的位置通过应用块匹配运动估计技术进行评估。基于提取的特征,设计了具有不同网络训练功能的多层前馈反向传播网络(FFBPNN),并对它们的分类性能进行了比较。该系统已针对一组健康和受伤的受试者进行了测试。结果表明,与带有其他训练功能的FFBPNN基于EMG和STDP的RMS值进行识别的步态模式相比,具有Levenberg-Marquardt训练功能的FFBPNN提供了更好的预测行为(整体准确性为98%)。

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