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Towards Control of a Transhumeral Prosthesis with EEG Signals

机译:借助EEG信号控制肱骨假体

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摘要

Robotic prostheses are expected to allow amputees greater freedom and mobility. However, available options to control transhumeral prostheses are reduced with increasing amputation level. In addition, for electromyography-based control of prostheses, the residual muscles alone cannot generate sufficiently different signals for accurate distal arm function. Thus, controlling a multi-degree of freedom (DoF) transhumeral prosthesis is challenging with currently available techniques. In this paper, an electroencephalogram (EEG)-based hierarchical two-stage approach is proposed to achieve multi-DoF control of a transhumeral prosthesis. In the proposed method, the motion intention for arm reaching or hand lifting is identified using classifiers trained with motion-related EEG features. For this purpose, neural network and k-nearest neighbor classifiers are used. Then, elbow motion and hand endpoint motion is estimated using a different set of neural-network-based classifiers, which are trained with motion information recorded using healthy subjects. The predictions from the classifiers are compared with residual limb motion to generate a final prediction of motion intention. This can then be used to realize multi-DoF control of a prosthesis. The experimental results show the feasibility of the proposed method for multi-DoF control of a transhumeral prosthesis. This proof of concept study was performed with healthy subjects.
机译:机器人假肢有望使截肢者获得更大的自由和机动性。但是,随着截肢水平的提高,用于控制经肱骨假体的可用选项会减少。此外,对于基于肌电图的假体控制,仅残留肌肉无法产生足够不同的信号来实现远端臂的准确功能。因此,利用当前可用的技术来控制多自由度(DoF)经肱骨假体是具有挑战性的。本文提出了一种基于脑电图(EEG)的分级两阶段方法,以实现经肱骨假体的多自由度控制。在所提出的方法中,使用经过与运动相关的脑电图特征训练的分类器来识别手臂伸直或举手的运动意图。为此,使用了神经网络和k最近邻分类器。然后,使用一组不同的基于神经网络的分类器来估计肘部运动和手部端点运动,这些分类器将使用健康受试者记录的运动信息进行训练。来自分类器的预测与残肢运动进行比较,以产生运动意图的最终预测。然后可以将其用于实现假体的多自由度控制。实验结果表明,该方法可用于经肱骨假体的多自由度控制。对健康受试者进行了概念验证研究。

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