基于神经网络的时域运动图像分类在脑机接口中的应用

M. Hamedi, S. Salleh, A. M. Noor, Iman Mohammad-Rezazadeh
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引用次数: 49

摘要

许多研究报道了运动图像(MI)脑电图(EEG)信号对脑机接口(BCI)系统的有用性。心肌梗死的广泛特征是特定频带的脑活动事件相关变化的平均值;但是,EEG的时间特征很少被用来识别脑机接口使用者的不同精神状态。此外,复杂的分类技术可能会提高系统的准确性,但它们可能会导致在线应用过程中的明显延迟。研究了基于神经网络的脑电信号时域特征分类算法在三类MIs分类中的应用。从脑电信号中提取综合EEG (IEEG)和均方根(RMS)特征。然后,采用多层感知器和径向基函数神经网络对特征进行分类。通过不同的分类器对这些特征的识别率进行了检验和比较。此外,对分类器的鲁棒性进行了研究和比较。结果表明,RMS比IEEG更能表征心肌梗死的运动特征,RBF比MLP更准确、更快。将IEEG和RMS特征的有效性以及MLP和RBF分类器与WAMP特征和支持向量机分类器的性能进行了比较。本研究证明WAMP和SVM在准确率(88.96%)和训练时间(0.5秒)两方面对MI任务的分类效率更高;然而,由于RBF的执行速度与SVM一样快,准确率仅低3%左右,因此没有观察到明显的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network-based three-class motor imagery classification using time-domain features for BCI applications
Many studies have reported the usefulness of motor imagery (MI) electroencephalogram (EEG) signals for Brain Computer Interface (BCI) systems. MI has been broadly characterized by the average of event-related changes of brain activity at specific frequency bands; but, temporal features of EEG have rarely been considered to identify different mental states of BCIs' users. Additionally, complex classification techniques may have been proposed to enhance the accuracy of system but they may cause a notable delay during online applications. This paper investigated the application of neural network-based algorithms to classify three-class MIs by utilizing EEG time-domain features. Integrated EEG (IEEG) and Root Mean Square (RMS) features were extracted from EEG signals. Then, Multilayer Perceptron and Radial Basis Function Neural Networks were employed to classify the features. The discrimination ratio of such features were examined and compared through different classifiers. Moreover, the robustness of classifiers was investigated and compared. The results of this study indicated that RMS was more capable than IEEG for characterizing MI movements and RBF was more accurate and faster than MLP. The effectiveness of IEEG and RMS features and the performance of MLP and RBF classifiers were compared with Willison Amplitude (WAMP) feature and support vector machine (SVM) classifier respectively. This study proved that WAMP and SVM were more efficient for classification of MI tasks in both terms of accuracy (88.96%) and training time (0.5 second); however, considerable difference was not observed since RBF performed as fast as SVM with only about 3% less accuracy.
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