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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Wavelet multiresolution complex network for decoding brain fatigued behavior from P300 signals
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Wavelet multiresolution complex network for decoding brain fatigued behavior from P300 signals

机译:小波多分辨率复杂网络从P300信号解码脑疲劳行为

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Brain-computer interface (BCI) enables users to interact with the environment without relying on neural pathways and muscles. P300 based BCI systems have been extensively used to achieve human-machine interaction. However, the appearance of fatigue symptoms during operation process leads to the decline in classification accuracy of P300. Characterizing brain cognitive process underlying normal and fatigue conditions constitutes a problem of vital importance in the field of brain science. We in this paper propose a novel wavelet decomposition based complex network method to efficiently analyze the P300 signals recorded in the image stimulus test based on classical 'Oddball' paradigm. Initially, multichannel EEG signals are decomposed into wavelet coefficient series. Then we construct complex network by treating electrodes as nodes and determining the connections according to the 2-norm distances between wavelet coefficient series. The analysis of topological structure and statistical index indicates that the properties of brain network demonstrate significant distinctions between normal status and fatigue status. More specifically, the brain network reconfiguration in response to the cognitive task in fatigue status is reflected as the enhancement of the small-worldness. (C) 2018 Elsevier B.V. All rights reserved.
机译:脑电脑界面(BCI)使用户能够与环境进行交互,而无需依赖神经途径和肌肉。基于P300的BCI系统已广泛用于实现人机交互。然而,操作过程中疲劳症状的外观导致P300的分类准确性下降。表征脑认知过程潜在的正常和疲劳条件构成了脑科学领域至关重要的问题。本文提出了一种基于小波分解的基于小波分解的复杂网络方法,以有效地分析了基于经典的“奇怪的”范式在图像刺激测试中记录的P300信号。最初,多通道EEG信号被分解成小波系数序列。然后,我们通过将电极视为节点并根据小波系数序列之间的2范数距离确定连接来构造复杂网络。拓扑结构和统计指标分析表明脑网络的性质在正常状态和疲劳状态之间表现出显着的区别。更具体地,响应于疲劳状态的认知任务的大脑网络重新配置被反映为增加小世界的增强。 (c)2018年elestvier b.v.保留所有权利。

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