Classification of motor imagery tasks with LS-SVM in EEG-based self-paced BCI

Mahmoud E. A. Abdel-Hadi, Reda A. El-Khoribi, M. Shoman, M. M. Refaey
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引用次数: 8

Abstract

Motivated by the need to deal with critical disorders that involve death of neurons, such as Amyotrophic Lateral Sclerosis (ALS) and brainstem stroke, interpretation of the brain's Motor Imagery (MI) activities is highly needed. Brain signals can be translated into control commands. Electroencephalography (EEG) is considered in this work, EEG is a low-cost non-invasive technique. A big challenge is faced due to the poor signal-to-noise ratio of EEG signals. The dataset used in this work is based on asynchronous or self-paced motor imagery problem. The used self-paced Brain Computer Interface (BCI) problem poses a considerable challenge by introducing an additional class, a relax class, or non-intentional control periods that are not included in the training set and should be classified. In this work, a number of subject dependent parameters and their values are determined. These parameters are: the best frequency range, the best Common Spatial Pattern (CSP) channels, and the number of these CSP channels. System parameters are determined dynamically in the offline training phase. Energy based features are extracted afterwards from the best selected signals. The Least-Squares Support Vector Machine (LS-SVM) classifier is used as a classification back end. Results of the proposed system show superiority over the previously introduced systems in terms of the Mean Square Error (MSE) when tested on the Berlin BCI (BBCI) competition IV dataset 1.
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基于脑电自定步脑机接口的LS-SVM运动想象任务分类
由于需要处理涉及神经元死亡的严重疾病,如肌萎缩侧索硬化症(ALS)和脑干中风,对大脑运动图像(MI)活动的解释是非常必要的。大脑信号可以转换成控制命令。脑电图(EEG)是一种低成本的无创技术。由于脑电图信号的信噪比较差,这给脑电信号的检测带来了很大的挑战。在这项工作中使用的数据集是基于异步或自定节奏的运动图像问题。所使用的自定节奏脑机接口(BCI)问题带来了相当大的挑战,因为它引入了一个额外的类,一个放松类或非故意控制期,这些类不包括在训练集中,应该分类。在这项工作中,确定了一些与主题相关的参数及其值。这些参数是:最佳频率范围,最佳公共空间模式(CSP)信道,以及这些CSP信道的数量。在离线训练阶段动态确定系统参数。然后从最佳选择的信号中提取基于能量的特征。使用最小二乘支持向量机(LS-SVM)分类器作为分类后端。在Berlin BCI (BBCI) competition IV数据集1上进行测试时,所提出的系统的结果显示,在均方误差(MSE)方面优于先前引入的系统。
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