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基于神经网络和模糊粒子群优化的轮椅指令脑机接口分类器。

Brain-computer interface classifier for wheelchair commands using neural network with fuzzy particle swarm optimization.

出版信息

IEEE J Biomed Health Inform. 2014 Sep;18(5):1614-24. doi: 10.1109/JBHI.2013.2295006.

DOI:10.1109/JBHI.2013.2295006
PMID:25192573
Abstract

This paper presents the classification of a three-class mental task-based brain-computer interface (BCI) that uses the Hilbert-Huang transform for the features extractor and fuzzy particle swarm optimization with cross-mutated-based artificial neural network (FPSOCM-ANN) for the classifier. The experiments were conducted on five able-bodied subjects and five patients with tetraplegia using electroencephalography signals from six channels, and different time-windows of data were examined to find the highest accuracy. For practical purposes, the best two channel combinations were chosen and presented. The three relevant mental tasks used for the BCI were letter composing, arithmetic, and Rubik's cube rolling forward, and these are associated with three wheelchair commands: left, right, and forward, respectively. An additional eyes closed task was collected for testing and used for on-off commands. The results show a dominant alpha wave during eyes closure with average classification accuracy above 90%. The accuracies for patients with tetraplegia were lower compared to the able-bodied subjects; however, this was improved by increasing the duration of the time-windows. The FPSOCM-ANN provides improved accuracies compared to genetic algorithm-based artificial neural network (GA-ANN) for three mental tasks-based BCI classifications with the best classification accuracy achieved for a 7-s time-window: 84.4% (FPSOCM-ANN) compared to 77.4% (GA-ANN). More comparisons on feature extractors and classifiers were included. For two-channel classification, the best two channels were O1 and C4, followed by second best at P3 and O2, and third best at C3 and O2. Mental arithmetic was the most correctly classified task, followed by mental Rubik's cube rolling forward and mental letter composing.

摘要

本文提出了一种基于三类心理任务的脑-机接口(BCI)的分类,该接口使用希尔伯特-黄变换作为特征提取器,模糊粒子群优化交叉突变人工神经网络(FPSOCM-ANN)作为分类器。实验在五名健康受试者和五名四肢瘫痪患者中进行,使用来自六个通道的脑电图信号,检查了不同的时间窗口数据,以找到最高的准确性。出于实际目的,选择并呈现了最佳的两个通道组合。用于 BCI 的三个相关心理任务是字母组成、算术和魔方向前滚动,这些任务分别与轮椅的三个命令相关联:左、右和前进。还收集了一个闭眼任务用于测试,并用于开/关命令。结果表明,在闭眼时存在主导的阿尔法波,平均分类准确率超过 90%。与四肢健全的受试者相比,四肢瘫痪患者的准确率较低;然而,通过增加时间窗口的持续时间可以提高准确率。与基于遗传算法的人工神经网络(GA-ANN)相比,FPSOCM-ANN 为基于三种心理任务的 BCI 分类提供了更高的准确性,在 7 秒时间窗口下达到最佳分类准确率:84.4%(FPSOCM-ANN)比 77.4%(GA-ANN)。还包括了更多关于特征提取器和分类器的比较。对于双通道分类,最佳的两个通道是 O1 和 C4,其次是 P3 和 O2,第三是 C3 和 O2。心理算术是分类最正确的任务,其次是心理魔方向前滚动和心理字母组成。

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