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EMG signal patterns recognition based on feedforward Artificial Neural Network applied to robotic prosthesis myoelectric control

机译:基于前馈人工神经网络的肌电信号模式识别在机器人假体肌电控制中的应用

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The present work is part of the “Hand of Hope” project, which seeks to develop low-cost robotic prostheses with the aim of contributing to the social and labor inclusion of people with motor disabilities of their upper extremities. The specific objective to address in this work is the design and development of the system architecture to recognition of EMG (Electromyography) signal patterns, the purpose is to control the functions of objects handling by the robotic prosthesis. There are proposed methods to the recognition of EMG signal patterns; however it defined using a Feedforward-backpropagation Artificial Neural Network (ANN) because have high success rate (Sr) using the least amount of channels, can be supported on platforms on-line and real-time; and moreover in order to improve the ANN-Sr values, it was used as input the envelope of the EMG signal instead of the original signal. For the performance evaluation 20 assessments for each of the four EMG signal patterns (relaxed hand/cylindrical grip, pinch grip, thumb adduction, and index finger extended) were performed, from the results it is observed that the average success rate is equal to 95%.
机译:当前的工作是“希望之手”项目的一部分,该项目旨在开发低成本的机器人假肢,以促进上肢运动障碍人士的社会和劳动包容。在这项工作中要解决的特定目标是设计和开发用于识别EMG(电描记术)信号模式的系统架构,目的是控制机器人假体处理物体的功能。已经提出了用于识别EMG信号模式的方法。但是,由于使用最少的渠道就具有很高的成功率(Sr),因此可以使用前馈-反向传播人工神经网络(ANN)进行定义,并且可以在在线和实时平台上提供支持;而且为了改善ANN-Sr值,它被用作输入EMG信号的包络而不是原始信号。为了进行性能评估,对四个EMG信号模式(松弛的手/圆柱形握力,捏握力,拇指内收和食指伸出)进行了20次评估,从结果可以看出,平均成功率等于95 %。

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