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Feature Evaluation and Pattern Recognition of Lower Limb Muscle EMG during Postural Balance Control

机译:姿势平衡控制过程中下肢肌肌电的特征评估和模式识别

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摘要

We recognized EMG signal patterns of lower limb muscles by using neural networks and performed feature evaluation during the recovery of postural balance of human body. Surface electrodes were attached to lower limb and EMG signals were collected during the balance recovery process from a perturbation without permitting compensatory stepping. A waist pulling system was used to apply transient perturbations in five horizontal directions. The EMG signals of fifty repetitions of five motions were analyzed for ten subjects. Twenty features were extracted from EMG signals of one event. Feature evaluation was also performed by using DB (Davies-Bouldin) index. By using neural networks, EMG signals were classified into five categories, such as forward perturbation, backward perturbation, lateral perturbation and two oblique perturbations. As results, motions were recognized with mean success rates of 75 percent. With the neural networks classifier of this study, the EMG patterns of lower limb muscles during the recovery of postural balance can be classified with high accuracy of recognition.
机译:我们使用神经网络识别了下肢肌肉的肌电信号模式,并在人体姿势平衡恢复过程中进行了特征评估。将表面电极连接到下肢,并在平衡恢复过程中从微扰中收集EMG信号,而无需进行补偿性步进。腰部牵引系统用于在五个水平方向施加瞬态扰动。对十个受试者分析了五个动作的五十次重复的EMG信号。从一个事件的EMG信号中提取了二十个特征。还使用DB(Davies-Bouldin)索引进行了功能评估。通过使用神经网络,肌电信号被分为五类,例如前向扰动,后向扰动,侧向扰动和两个斜向扰动。结果,动议得到认可,平均成功率为75%。使用本研究的神经网络分类器,可以以较高的识别准确度对姿势平衡恢复期间下肢肌肉的EMG模式进行分类。

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