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EEG representation using multi-instance framework on the manifold of symmetric positive definite matrices

机译:在对称正明矩阵歧管上使用多实例框架的EEG表示

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Objective. The generalization and robustness of an electroencephalogram (EEG)-based system are crucial requirements in actual practices. Approach. To reach these goals, we propose a new EEG representation that provides a more realistic view of brain functionality by applying multi-instance (MI) framework to consider the non-stationarity of the EEG signal. In this representation, the non-stationarity of EEG is considered by describing the signal as a bag of relevant and irrelevant concepts. The concepts are provided by a robust representation of homogeneous segments of EEG signal using spatial covariance matrices. Due to the nonlinear geometry of the space of covariance matrices, we determine the boundaries of the homogeneous segments based on adaptive segmentation of the signal in a Riemannian framework. Each subject is described as a bag of covariance matrices of homogeneous segments and the bag-level discriminative information is used for classification. Main results. To evaluate the performance of the proposed approach, we examine it in a cultural neuroscience application for classification Iranian versus Swiss normal subjects to discover if strongly differing cultures can result in distinguishing patterns in brain electrical activity of the subjects. To confirm the effectiveness of the proposed representation, we also evaluate the proposed representation in EEG-based mental disorder diagnosis application for attention deficit hyperactivity disorder (ADHD)/bipolar mood disorder (BMD), Schizophrenia/ normal, and Major Depression Disorder/normal diagnosis applications. Significance. Experimental results confirm the superiority of the proposed approach, which is gained due to the robustness of covariance descriptor, the effectiveness of Riemannian geometry, the benefits of considering the inherent non-stationary nature of the brain by applying bag-level discriminative information, and automatic handling the artifacts.
机译:客观的。基于脑电图(EEG)的系统的泛化和鲁棒性是实际实践中的至关重要要求。方法。为了达到这些目标,我们提出了一个新的EEG表示,通过应用多实例(MI)框架来考虑EEG信号的非实用性来提供更现实的大脑功能。在该表示中,通过将信号描述为相关和无关概念的袋来考虑EEG的非实用性。概念由使用空间协方差矩阵的EEG信号的均匀区段的稳健表示提供。由于协方差矩阵的空间的非线性几何形状,我们基于riemannian框架中的信号的自适应分割来确定均匀段的边界。每个受试者被描述为同种异体段的一袋协方差矩阵,并且袋级鉴别信息用于分类。主要结果。为了评估所提出的方法的表现,我们将其审视其在文化神经科学申请中,伊朗与瑞士正常对象的分类申请,以发现强烈不同的文化是否会导致脑电活动的脑电活动中的模式。为了确认拟议的代表性的有效性,我们还评估了脑脑病的精神障碍诊断应用中提出的代表,用于注意缺陷多动障碍(ADHD)/双极情绪障碍(BMD),精神分裂症/正常和主要抑郁症/正常诊断应用程序。意义。实验结果证实了所提出的方法的优越感,这是由于协方差描述符的鲁棒性,利莫曼几何的有效性,通过应用袋级鉴别信息和自动来考虑大脑固有的非静止性质的益处处理伪影。

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