一种简化的脑电信号左右运动图像特征选择与分类算法测试工具

Giovanna Bonafe Bernardi, T. Pimenta, R. Moreno
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引用次数: 4

摘要

根据所分析的数据类型以及所使用的特征和参数,一些算法或它们的组合比其他算法更合适。在基于脑电图的离线脑机接口(BCI)的运动图像分析中,通常使用不同参数的不同代码,这使得比较所应用算法的效果变得更加困难。在本文中,我们提出了一个简化和有限的工具,旨在帮助测试特征提取,选择和分类算法单独或组合,以分析离线基于脑电图的大脑信号中的运动图像,同时提供有关脑机接口构建中间步骤的一些信息。为了方便与其他研究的比较,使用了已知的数据集。仅使用C3、Cz和C4通道的数据,并分析了左手和右手的MI。使用带通切比雪夫II型滤波器在5和35Hz之间过滤数据。然后,使用具有5级db4母小波的离散小波变换(DWT)算法对节奏mu和beta进行分离。所提出的系统有两个输出:与节奏mu和beta相关的DWT系数;以及一个包含三个选定特征的特征向量,可以用作分类器的输入。提取的特征有均值、方差和能量。这些都是简单但有效的功能。修复一些参数简化了工具,为算法比较提供了更好的环境,并允许用户专注于BCI构建的特定步骤,如特征选择和分类阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simplified Tool for Testing of Feature Selection and Classification Algorithms in Motor Imagery of Right and Left Hands of EEG Signals
Some algorithms or a combination of them are more appropriated than others depending on the type of data that is being analyzed and what features and parameters are being used. In the analysis of motor imagery (MI) in an offline EEG-based brain-computer interface (BCI), different codes with different parameters are often used, making it harder to compare the effects of the algorithms applied. In this paper, we propose a simplified and limited tool that aims to aid in the testing of feature extraction, selection and classification algorithms separately or combined for the analysis of motor imagery in offline EEG-based brain signals while providing some information about the intermediate steps of a BCI construction. A known data set is used in order to ease the comparison between other researches. Only data from channels C3, Cz and C4 are used and the MI of left hand and right hand are analyzed. The data is filtered using a band-pass Chebyshev type II filter between 5 and 35Hz. Then, The rhythms mu and beta are isolated using a discrete wavelet transform (DWT) algorithm with a db4 mother wavelet of level 5. The proposed system has two outputs: the coefficients of the DWT related to the rhythms mu and beta; and a feature vector with three chosen features that can be used as an input to a classifier. The features extracted are mean, variance and energy. These are simple but effective features. Fixing some of the parameters simplifies the tool, offers a better environment for comparison of algorithms and allows the user to focus on specific steps of a BCI construction such as the feature selection and the classification phases.
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