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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Motor imagery, P300 and error-related EEG-based robot arm movement control for rehabilitation purpose.
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Motor imagery, P300 and error-related EEG-based robot arm movement control for rehabilitation purpose.

机译:运动图像,P300和基于错误的基于EEG的机器人手臂运动控制,用于康复目的。

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摘要

The paper proposes a novel approach toward EEG-driven position control of a robot arm by utilizing motor imagery, P300 and error-related potentials (ErRP) to align the robot arm with desired target position. In the proposed scheme, the users generate motor imagery signals to control the motion of the robot arm. The P300 waveforms are detected when the user intends to stop the motion of the robot on reaching the goal position. The error potentials are employed as feedback response by the user. On detection of error the control system performs the necessary corrections on the robot arm. Here, an AdaBoost-Support Vector Machine (SVM) classifier is used to decode the 4-class motor imagery and an SVM is used to decode the presence of P300 and ErRP waveforms. The average steady-state error, peak overshoot and settling time obtained for our proposed approach is 0.045, 2.8% and 44 s, respectively, and the average rate of reaching the target is 95%. The results obtained for the proposed control scheme make it suitable for designs of prosthetics in rehabilitative applications.
机译:本文提出了一种新颖的方法,通过利用电机图像,P300和错误相关电位(ErRP)将机器人手臂对准所需的目标位置,从而对机器人手臂进行EEG驱动的位置控制。在提出的方案中,用户生成电机图像信号以控制机器人手臂的运动。当用户打算在到达目标位置时停止机器人的运动时,将检测到P300波形。潜在的错误被用户用作反馈响应。在检测到错误时,控制系统会对机器人手臂进行必要的校正。在这里,使用AdaBoost支持向量机(SVM)分类器对4类运动图像进行解码,并使用SVM对P300和ErRP波形的存在进行解码。我们提出的方法获得的平均稳态误差,峰值超调和建立时间分别为0.045、2.8%和44 s,达到目标的平均率为95%。所提出的控制方案获得的结果使其适合于康复应用中的假体设计。

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