基于脑机接口的机器人运动控制中脑电信号运动伪影去除

D. Pancholi, M. Vekatadri, P. Rawat
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引用次数: 0

摘要

随着技术平台的发明,机器人已经成为我们生活中必不可少的一部分。脑机接口(BCI)是基于人脑的机器人控制系统的核心。近年来,基于脑电信号的机器人运动控制系统已经证明了其有效性。大脑信号是通过放置在人类头皮上的电极捕获的。捕获的信号受到各种运动伪影的影响。本文主要研究如何从机器人运动和方向控制系统捕获的脑电图信号中去除运动伪影。论文首先介绍了脑机接口系统在机器人技术中的应用。本文比较了ICA、EEMD-CCA和EEMD-CCA- dwt等各种伪影去除算法的性能。对这些方法分解的各种内禀模态函数(IMF)的结果进行了评估和比较,以用于机器人技术中的伪影去除。通过定量分析发现,基于CCA的方法比其他方法更快,效率也更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG Motion Artifacts Removal for Robotic Motion Control Using Brain Computer Interface
With invent of technological platforms the robotic has become essential part of our life. The Brain Computer Interface (BCI) is the heart of human brain based robotic control systems. EEG signal based robotic motion control system have proven there efficiency in the recent times. The brains signals are captured using the electrodes placed on human scalp. The captured signals suffer from the various motion artifacts. This paper is primarily focused to removal of the motion artifacts from the EEG signals captured for robotic motion and direction control systems. Paper first describes the utility of the BCI system in robotics. Paper compares the performance of various artifact removal algorithms as ICA, EEMD-CCA, and EEMD-CCA-DWT. The various results of Intrinsic Mode Functions (IMF‘s) decomposed from these methods are evaluated and compared for the artifact removal application in Robotics. It is found based on quantitative analysis that CCA based methods are faster than other and are efficient too.
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