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A Bayesian Framework to Optimize Double Band Spectra Spatial Filters for Motor Imagery Classification

机译:贝叶斯框架,优化用于电机图像分类的双频光谱空间滤波器

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The ability to discriminate and classify different tasks is a crucial requirement for any Electroencephalogram (EEG) based Brain computer Interface (BCI). However, the intra and inter subject variability in the brain signal patterns is a bottleneck for developing general BCI systems and needs to be tackled. To address this issue, recently filter banks are deployed to extract frequency specific features, which are then fused at the classification step. On the other hand, some works deploy optimization techniques to design (extract) subject-specific filters (features). While both approaches have reached compromising results, there is still a huge gap between the performance of the techniques and that of humans. In this regard, we propose a Bayesian framework to simultaneously optimize a number of filter banks and spatial filters according to the patterns of brain activity for each subject. Referred to as the Bayesian double band spectro-spatial filter optimization (B2B-SSFO), the proposed method aims at combining the advantages of the two aforementioned approaches, and consists of two bandpass filters providing frequency specific features for each subject. The proposed framework is evaluated on dataset 2b from BCI Competition IV. The proposed B2B-SSFO approach outperforms its counterparts and introduces a robust framework for motor imagery studies.
机译:区分和分类不同任务的能力是对基于脑电图(EEG)的脑电脑界面(BCI)的关键要求。然而,脑信号模式中的帧内和介质可变性是开发一般BCI系统的瓶颈,并且需要解决。要解决此问题,最近筛选银行部署以提取频率特定功能,然后在分类步骤中融合。另一方面,某些作品将优化技术部署到设计(提取)特定于特定的过滤器(特征)。虽然这两种方法都达到了妥协的结果,但在技术的性能与人类的性能之间仍然存在巨大差距。在这方面,我们提出了贝叶斯框架,同时根据每个受试者的大脑活动模式同时优化许多滤波器组和空间滤波器。所谓的贝叶斯双频频谱空间滤波器优化(B2B-SSFO),所提出的方法旨在组合两个上述方法的优点,并由两个带通滤波器组成,为每个受试者提供频率特定功能。所提出的框架是在BCI竞赛IV的数据集2b上进行评估。所提出的B2B-SSFO方法优于其对应物,并为电动机图像研究引入了强大的框架。

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