首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >An efficient intelligent system for the classification of electroencephalography (EEG) brain signals using nuclear features for human cognitive tasks
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An efficient intelligent system for the classification of electroencephalography (EEG) brain signals using nuclear features for human cognitive tasks

机译:一种高效的智能系统,用于使用核特征对人类认知任务的核特征进行脑电图(EEG)脑信号的智能系统

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Representation and classification of Electroencephalography (EEG) brain signals are critical processes for their analysis in cognitive tasks. Particularly, extraction of discriminative features from raw EEG signals, without any preprocessing, is a challenging task. Motivated by nuclear norm, we observed that there is a significant difference between the variances of EEG signals captured from the same brain region when a subject performs different tasks. This observation lead us to use singular value decomposition for computing dominant variances of EEG signals captured from a certain brain region while performing a certain task and use them as features (nuclear features). A simple and efficient class means based minimum distance classifier (CMMDC) is enough to predict brain states. This approach results in the feature space of significantly small dimension and gives equally good classification results on clean as well as raw data. We validated the effectiveness and robustness of the technique using four datasets of different tasks: fluid intelligence clean data (FICD), fluid intelligence raw data (FIRD), memory recall task (MRT), and eyes open / eyes closed task (EOEC). For each task, we analyzed EEG signals over six (06) different brain regions with 8, 16, 20, 18, 18 and 100 electrodes. The nuclear features from frontal brain region gave the 100% prediction accuracy. The discriminant analysis of the nuclear features has been conducted using intra-class and inter-class variations. Comparisons with the state-of-the-art techniques showed the superiority of the proposed system.
机译:脑电图(EEG)脑信号的表示和分类是他们在认知任务中分析的关键过程。特别地,从未加工的未经预处理的未经预处理提取来自原始EEG信号的辨别特征是一个具有挑战性的任务。核标准的动机,我们观察到,当受试者执行不同的任务时,从同一大脑区域捕获的EEG信号的差异之间存在显着差异。该观察引导我们使用奇异值分解来计算从某个大脑区域捕获的EEG信号的主导方差,同时执行某项任务并将其用作特征(核特征)。基于简单且有效的类别装置的最小距离分类器(CMMDC)足以预测脑状态。这种方法产生了明显小维度的特征空间,并在干净的和原始数据上给出同样良好的分类结果。我们验证了使用不同任务的四个数据集的技术的有效性和稳健性:流体智能清洁数据(FICD),流体智能原始数据(FIRD),内存召回任务(MRT),眼睛闭合/眼睛关闭任务(EOEC)。对于每项任务,我们分析了超过六(06)不同的大脑区域的EEG信号,其中8,16,20,18,18和100个电极。来自额叶区域的核特征给出了100%的预测精度。使用课外和级别的变异进行了对核特征的判别分析。具有最先进的技术的比较显示了所提出的系统的优越性。

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