基于运动意象脑电信号能量计算的公共空间模式通道选择

Hilman Fauzi, M. I. Shapiai, N. A. Setiawan, J. Jaafar, M. Mustafa
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引用次数: 7

摘要

共同空间模式(Common Spatial Pattern, CSP)是运动图像脑电信号识别中常用的特征提取方法之一。CSP是一种同时将一类方差最大化和另一类方差最小化的算法,以区分两类多通道脑电信号进行分类。然而,CSP假设所有EEG通道上的信号在功能上相互连接,即使只是由于伪影或噪声而产生的虚假关系。本研究将在脑兴奋计算中施加基于计算能量的通道选择,对分类性能进行若干研究。改进策略计算每个通道中的能量,并根据能量级别进行选择。为了验证所提出的技术的性能,使用了三个运动图像数据集,包括RIKEN、BCI Competition III数据集IVa和BCI Competition IVData集i。总的来说,所有这些数据集都在现有的CSP及其变体上进行了测试,无论是否采用了所提出的通道选择策略。本研究包括现有的CSP、R-CSP(正则化CSP)和A-CSP(分析CSP)技术。结果表明,选择能量较高的通道可以提高CSP、R-CSP和A-CSP的分类性能。此外,在运动皮质区域中选择较小尺寸的通道提供了更好的性能,通道减少了近75%,准确性提高了8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel selection for common spatial pattern Based on energy calculation of motor imagery EEG signal
One of the popular features extraction methods for recognizing motor imagery EEG signal is Common Spatial Pattern (CSP). CSP is an algorithm that maximize the variance of one class and minimize the variance of other class simultaneously to discriminate two classes of multichannel EEG signals for classification purpose. However, CSP assumes that the signals on all EEG channels are functionally interconnected even though only spurious relationship due to artefact or noise. This study will conduct several investigations on the classification performance by imposing channels selection based on calculated energy on brain excitation calculation. The improvement strategy calculates the energy in each channel and the selection will be based on the energy level. In order to validate the performance of the proposed technique, three motor imagery data sets are employed including RIKEN, BCI Competition III Data set IVa, and BCI Competition IVData set I. In general, all these datasets are tested on the existing CSP and its variants with and without the proposed channel selection strategy. The existing techniques such as CSP, R-CSP (regularized CSP), and A-CSP (analytic CSP) are included in this study. The results show that the selected channels with higher energy can improve the CSP, R-CSP and A-CSP classification performance. Also, smaller size of selected channels in the area of motor cortex offers better performance with almost 75% channel reduction and 8% increase in accuracy.
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