Characterization of EEG signals using wavelet transform for motor imagination tasks in BCI systems

Boris Medina-Salgado, L. Duque-Muñoz, H. Fandiño-Toro
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引用次数: 12

Abstract

Brain Computer Interface (BCI) covers an area of special interest, mainly due to the research being conducted to control external devices via thought commands, generating solutions in both motor disability and speech. These applications require the use of signal processing in real time, to be used in devices that help people with this type of disabilities. This paper presents a methodology for feature extraction of electroencephalographic (EEG) signals in motor imagery task of both left and right hand, using the public database BCI Competition 2003. It has been used the wavelet transform for the signal decomposition in the spectral bands of interest (known as brain rhythms). The brain rhythms characterization was conducted through relative energy, variance and standard deviation of the wavelet coefficients. In addition, we conducted the relevance analysis through the fuzzy entropy algorithm, to find the most important features within the training set. We obtained a classification accuracy of up to 98.44% using K-NN and SVM algorithms. The classification results allow inferring that the methodology is appropriate for the recognition of imagination movements in people with motor disabilities and could generate solutions in applications of BCI systems.
脑机接口系统运动想象任务脑电信号的小波变换表征
脑机接口(BCI)涵盖了一个特别感兴趣的领域,主要是因为正在进行的研究是通过思想命令控制外部设备,产生运动障碍和语言的解决方案。这些应用程序需要使用实时信号处理,以用于帮助此类残疾人的设备。本文提出了一种基于BCI Competition 2003的左手和右手运动想象任务脑电图(EEG)信号特征提取方法。用小波变换在感兴趣的谱带(称为脑节律)中对信号进行分解。通过小波系数的相对能量、方差和标准差对脑节律进行表征。此外,我们通过模糊熵算法进行相关性分析,找到训练集中最重要的特征。我们使用K-NN和SVM算法获得了高达98.44%的分类准确率。分类结果可以推断,该方法适用于识别运动障碍患者的想象运动,并可以在脑机接口系统的应用中产生解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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