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Fatigue Status Recognition in a Post-Stroke Rehabilitation Exercise with sEMG Signal

机译:SEMG信号中行程后康复运动中的疲劳状态识别

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Exercise therapy is considered as one of the main rehabilitation treatments for post-stroke patients, especially by utilizing modern technologies, such as virtual and/or augmented reality. However, in order to design an appropriate exercise program, which prolongs the exercise duration and maximize the patient's improvement, the fatigue status needs to be detected and used for the program adjustment. In the previous fatigue recognition works, only exercises for healthy and athlete subjects have been taken into account. In this paper, fatigue status classification has been accomplished in a rehabilitation exercise for poststroke patients. To do so, the reaching task, as a basic rehabilitation exercise, was performed by post-stroke patients, utilizing Xbox Kinect; and surface EMG signal and Maximum voluntary contraction (MVC) of the subjects were collected during the exercises. The MVC values were used as the reference for fatigue status. Several features were determined and extracted from the sEMG and finally, classification of fatigue status on the sE MG was performed by two well-known classifiers: Hidden Markov Model (HMM) and Artificial Neural Network (ANN). An accuracy of 95.3% was achieved by HMM, which is a promising step toward an automated fatigue status recognition system in post-stroke rehabilitation exercises.
机译:运动疗法被认为是卒中后患者的主要康复治疗之一,特别是通过利用现代技术,如虚拟和/或增强现实。然而,为了设计一个适当的运动程序,延长运动持续时间并最大限度地提高患者的改进,需要检测到疲劳状态并用于程序调整。在以前的疲劳识别工作中,只考虑了健康和运动员受试者的练习。在本文中,疲劳状态分类已经在初期患者的康复运动中完成。为此,作为基本康复运动的达到任务是由中风后患者进行的,利用Xbox Kinect;在运动期间收集受试者的表面EMG信号和最大自愿收缩(MVC)。 MVC值用作疲劳状态的参考。确定并从SEMG中确定并提取了几个特征,最后,通过两个公知的分类器进行SE MG上的疲劳状态的分类:隐马尔可夫模型(HMM)和人工神经网络(ANN)。通过HMM实现了95.3 %的准确性,这是朝着行程后康复锻炼中自动疲劳状态识别系统的有希望的步骤。

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