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Real-Time Upper Limb Motion Prediction from noninvasive biosignals for physical Human-Machine Interactions

机译:来自非侵入性生物的实时上肢运动预测物理人体机器相互作用

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Human motion and its intention sensing from noninvasive biosignals is one of the significant issues in the field of physical human-machine interactions (pHMI). This paper presents a real-time upper limb motion prediction method using surface electromyography (sEMG) signals for pHMI. The sEMG signals from 5 channels were collected and used to predict the motion by an artificial neural network (ANN) algorithm. We designed a human-machine interaction system to verify the proposed method. Interaction experiments were performed with or without physical contact, and the effects of instances of contact were investigated. The experimental results were compared with controlled experiments using a customized goniometer, which is able to measure upper limb flexion-extension. The results showed that the proposed method was not superior to the use of direct angle measurements; however, it provides sufficient accuracy and a fast response speed for interactions. SEMG-based interactions will become more natural with further studies of human-machine combination models.
机译:人类运动及其从非侵入性生物中的意图感应是物理人机相互作用领域(PHMI)领域的重要问题之一。本文介绍了一种使用表面肌电学(SEMG)信号的实时上肢运动预测方法,用于PHMI。收集来自5个通道的SEMG信号,并用于通过人工神经网络(ANN)算法预测运动。我们设计了一种人机交互系统,以验证所提出的方法。进行或没有物理接触进行相互作用实验,并研究了接触的情况的影响。将实验结果与使用定制的测筒仪进行控制实验进行比较,能够测量上肢屈曲 - 延伸。结果表明,该方法不优于使用直角测量;但是,它提供足够的准确性和相互作用的快速响应速度。随着对人机组合模型的进一步研究,SEMG的相互作用将变得更加自然。

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