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Real-Time Embedded EEG-Based Brain-Computer Interface

机译:基于实时嵌入式EEG的脑机接口

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摘要

Online artifact rejection, feature extraction, and pattern recognition are essential to advance the Brain Computer Interface (BCI) technology so as to be practical for real-world applications. The goals of BCI system should be a small size, rugged, lightweight, and have low power consumption to meet the requirements of wearability, portability, and durability. This study proposes and implements a moving-windowed Independent Component Analysis (ICA) on a battery-powered, miniature, embedded BCI. This study also tests the embedded BCI on simulated and real EEG signals. Experimental results indicated that the efficacy of the online ICA decomposition is comparable with that of the offline version of the same algorithm, suggesting the feasibility of ICA for online analysis of EEG in a BCI. To demonstrate the feasibility of the wearable embedded BCI, this study also implements an online spectral analysis to the resultant component activations to continuously estimate subject's task performance in near real time.
机译:在线人工产物剔除,特征提取和模式识别对于推进大脑计算机接口(BCI)技术至关重要,因此对于实际应用而言是实用的。 BCI系统的目标应该是小尺寸,坚固耐用,轻巧并具有低功耗,以满足可穿戴性,便携性和耐用性的要求。这项研究提出并在电池供电的微型嵌入式BCI上提出并实施了移动窗口独立成分分析(ICA)。这项研究还测试了模拟和真实EEG信号上的嵌入式BCI。实验结果表明,在线ICA分解的有效性可与同一算法的离线版本相媲美,这表明ICA在BCI中对EEG进行在线分析的可行性。为了证明可穿戴嵌入式BCI的可行性,本研究还对所产生的组件激活情况进行了在线光谱分析,以连续近乎实时地评估受试者的任务表现。

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