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A general framework to estimate spatial and spatio-spectral filters for EEG signal classification

机译:估计用于脑电信号分类的空间和空间谱滤波器的通用框架

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摘要

In this paper, a general framework is proposed for simultaneous design of spatial and spectral filters, which are used to extract discriminant features from EEC signals in Brain Computer Interfacing (BCI) systems. This paper introduces Common Spatial Patterns (CSP) as a step-by-step filter optimization algorithm, and then proposes a generalized type of the CSP which is not limited in a specific optimization constraint Moreover, it is shown that how this generalization can be extended to a spatio-spectral filter estimation scheme. Then, two specific versions of the generalized CSP are proposed, where a specific target function and optimization constraint are used for estimating the spatial and spectral filters. Unlike the traditional CSP which is not very closely linked to the classification accuracy, the proposed algorithms are able to be more directly aimed at achieving better accuracy and stability. Experimental results obtained from applying the introduced methods on the recorded imagery signals from two datasets, demonstrate considerable improvement in the classification accuracy and stability compared to the standard CSP and other similar methods.
机译:在本文中,提出了用于同时设计空间和频谱滤波器的通用框架,该框架用于从脑计算机接口(BCI)系统中的EEC信号中提取判别特征。本文介绍了通用空间模式(CSP)作为逐步过滤器优化算法,然后提出了不受特定优化约束限制的CSP通用类型。此外,它还展示了如何扩展这种通用性。到时空频谱滤波器估计方案。然后,提出了广义CSP的两个特定版本,其中使用特定的目标函数和优化约束来估计空间和频谱滤波器。与传统的CSP与分类精度不是很紧密地联系在一起,所提出的算法能够更直接地针对实现更好的精度和稳定性。通过将引入的方法应用于来自两个数据集的已记录图像信号而获得的实验结果表明,与标准CSP和其他类似方法相比,分类精度和稳定性有了显着提高。

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