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Non-Invasive BCI for the Decoding of Intended Arm Reaching Movement in Prosthetic Limb Control

机译:非侵入性BCI用于假肢控制中预期手臂伸入运动的解码

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Non-invasive electroencephalography (EEG) based brain-computer interface (BCI) is able to provide an alternative means of communication with and control over external assistive devices. In general, EEG is insufficient to obtain detailed information about many degrees of freedom (DOF) for arm movements. The main objectives are to design a non-invasive BCI and create a signal decoding strategy that allows people with limited motor control to have more command over potential prosthetic devices. Eight healthy subjects were recruited to perform visual cues directed reaching tasks. Eye and motion artifacts were identified and removed to ensure that the subjects’ visual fixation to the target locations would have little or no impact on the final result. We applied a Fisher Linear Discriminate (FLD) classifier to perform single-trial classification of the EEG to decode the intended arm movement in the left, right, and forward directions (before the onsets of actual movements). The mean EEG signal amplitude near the PPC region 271-310ms after visual stimulation was found to be the dominant feature for best classification results. A signal scaling factor developed was found to improve the classification accuracy from 60.11% to 93.91% in the binary class (left versus right) scenario. This result demonstrated great promises for BCI neuroprosthetics applications, as motor intention decoding can be served as a prelude to the classification of imagined motor movement to assist in motor disable rehabilitation, such as prosthetic limb or wheelchair control.
机译:基于非侵入性脑电图(EEG)的脑机接口(BCI)能够提供与外部辅助设备进行通信和控制的替代方法。通常,脑电图不足以获取有关手臂运动的许多自由度(DOF)的详细信息。主要目标是设计一种非侵入性BCI并创建一种信号解码策略,以使运动控制受限的人对潜在的修复设备有更多的控制权。招募了八名健康受试者来执行针对达到任务的视觉提示。识别并去除了眼睛和运动伪影,以确保对象对目标位置的视觉固定对最终结果几乎没有影响。我们应用了Fisher线性判别(FLD)分类器对脑电图进行单次试验分类,以解码预期的手臂在左,右和前进方向上的运动(在实际运动开始之前)。发现视觉刺激后PPC区域附近271-310ms的平均EEG信号幅度是获得最佳分类结果的主要特征。发现在二元类(左与右)场景中,开发出的信号缩放因子可将分类准确性从60.11%提高到93.91%。这一结果证明了BCI神经假肢应用的巨大前景,因为运动意图解码可以作为想象的运动方式分类的前奏,以帮助运动障碍者康复,例如假肢或轮椅控制。

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