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EMG Feature Extractions for Upper-Limb Functional Movement During Rehabilitation

机译:康复期间高肢功能运动的EMG特征提取

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Rehabilitation is important treatment for post stroke patient to regain their muscle strength and motor coordination as well as to retrain their nervous system. Electromyography (EMG) has been used by researcher to enhance conventional rehabilitation method as a tool to monitor muscle electrical activity however EMG signal is very stochastic in nature and contains some noise. Special technique is yet to be researched in processing EMG signal to make it useful and effective both to researcher and to patient in general. Feature extraction is among the signal processing technique involved and the best method for specific EMG study needs to be applied. In this works, nine feature extractions techniques are applied to EMG signals recorder from subjects performing upper limb rehabilitation activity based on suggested movement sequence pattern. Three healthy subjects perform the experiment with three trials each and EMG data were recorded from their bicep and deltoid muscle. The applied features for every trials of each subject were analyzed statistically using student T-Test their significant of p-value. The results were then totaled up and compared between the nine features applied and Auto Regressive coefficient (AR) present the best result and consistent with each subjects' data. This feature will be used later in our future research work of Upper-limb Virtual Reality Rehabilitation.
机译:康复是后卒中患者的重要疗法,以重新获得肌肉力量和运动协调以及重塑神经系统。研究人员已经使用了肌电图(EMG)来增强常规的康复方法作为监测肌肉电活动的工具,然而EMG信号本质上是非常随机的并且包含一些噪音。在处理EMG信号时尚未研究特殊技术,使其对研究人员和患者有用和有效。特征提取是所涉及的信号处理技术之一,并且需要应用特定EMG研究的最佳方法。在这作用中,九个特征提取技术应用于基于建议的运动序列模式执行上肢康复活动的受试者的EMG信号记录器。三个健康的受试者用三项试验进行实验,每次试验,并从其二头肌和三角肌肌中记录EMG数据。每个受试者的每次试验的应用特征都使用学生T检验分析它们显着的p值。然后将结果完全增长并比较九个特征与自动回归系数(AR)呈现最佳结果并与每个受试者的数据一致。此功能将在我们未来的高肢虚拟现实康复的研究工作中使用。

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