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Recognizing single-trial motor imagery EEG based on interpretable clustering method

机译:基于可解释的聚类方法识别单试电机图像EEG

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This work explores an approach for single-trial motor imagery (MI) electroencephalography (EEG) classification in interpretable clustering. The tensor structured EEG data under Mu rhythm is first processed by Common Spatial Subspace Decomposition (CSSD) to obtain the multi-dimensional CSSD-mapped EEG. In the dimensional feature reduction, Fisher's ratio is used as the cost function to automatically find the optimal projection plane with two feature vectors of CSSD-mapped EEG corresponding to the largest Fisher's ratio. Then, Discriminative Rectangle Mixture Model (DRMM) that gives a rectangular decision rule is used to identify optimal feature vectors to realize single-trial motor imagery EEG classification in an interpretable way. This innovative data analysis model generates reasonable cluster results driven by optimal feature data. The probability density distribution functions of EEG data in two classes can effectively explain the reliability of the rectangular decision rule given by the DRMM. The proposed method has been validated using the areas under the receiver operating characteristic curve (AUC) and cluster quality evaluation metrics. Experimental results demonstrate its performance is comparable to existing clustering and gives interpretable clustering results when detecting the motor intention involving EEG signals. This paper provides a novelty method based on interpretable clustering for single-trial MI EEG classification. And it may promote the development of BCI application.
机译:这项工作探讨了可解释聚类中的单试电动机图像(MI)脑电图(MI)脑电图(EEG)分类的方法。在MU节奏下的张量结构eEG数据首先由公共空间子空间分解(CSSD)处理,以获得多维CSSD映射的脑电图。在尺寸特征缩减中,Fisher的比率用作成本函数,以自动找到具有与最大渔民的CSSD映射的EEG的两个特征向量的最佳投影平面。然后,给出矩形决定规则的鉴别矩形混合模型(DRMM)用于识别最佳特征向量以以可解释的方式实现单试电机图像EEG分类。该创新的数据分析模型产生由最佳特征数据驱动的合理群集结果。两个类中EEG数据的概率密度分布函数可以有效地解释DRMM给出的矩形决策规则的可靠性。已经使用接收器操作特征曲线(AUC)下的区域和群集质量评估度量的区域进行了验证。实验结果表明其性能与现有聚类相当,并且在检测涉及脑电图信号的电机意图时,可以给予可解释的聚类结果。本文提供了一种基于可解释的群集的新颖性方法,用于单试性MI EEG分类。它可能会促进BCI应用的发展。

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