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Artificial neural networks based myoelectric control system for automatic assistance in hand rehabilitation

机译:基于人工神经网络的肌电控制系统在手部康复中的自动辅助

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Myoelectric control is using electromyography (EMG) signal as a source of control, with this technique, we can control any computer based system such as robots, devices or even virtual objects. The tendon gliding exercise is one of the most common hand's rehabilitation exercises. In this paper, we present a patterns recognition based myoelectric control system (MCS) for the automatic assistance in tendon gliding exercise. The user is assisted by visual indicators and demo videos. EMG patterns recognition is done with EMG features and a multi-layer Artificial neural network (ANN), the ANN classifier output is used to synchronize the demo video with the detected movement, the transition between states is done automatically when the current state's movement is correct and the required number of repetition is reached. The ANN learning is done using back-propagation algorithm, we have used only two sEMG electrodes and four common used timedomain EMG feature extraction methods, the features quality is evaluated by the average Rand index using eight unsupervised clustering algorithms. The efficacy of the proposed method is experimentally validated with five able-bodied subjects, where we have reached an average classification accuracy of 95.11% and a processing time less than 300ms.
机译:肌电控制使用肌电图(EMG)信号作为控制源,通过这种技术,我们可以控制任何基于计算机的系统,例如机器人,设备甚至虚拟对象。滑翔肌腱运动是最常见的手康复运动之一。在本文中,我们提出了一种基于模式识别的肌电控制系统(MCS),用于肌腱滑行运动的自动辅助。视觉指示器和演示视频可为用户提供帮助。 EMG模式识别是通过EMG功能和多层人工神经网络(ANN)完成的,ANN分类器输出用于将演示视频与检测到的运动进行同步,当当前状态的运动正确时,状态之间的转换会自动完成并达到所需的重复次数。 ANN学习是使用反向传播算法完成的,我们仅使用了两个sEMG电极和四种常用的时域EMG特征提取方法,使用八种无监督聚类算法通过平均Rand指数评估了特征质量。该方法的有效性已通过五个健全主体的实验验证,其中我们达到了95.11%的平均分类精度,处理时间不到300毫秒。

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