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首页> 外文期刊>NeuroImage >A regularized discriminative framework for EEG analysis with application to brain-computer interface.
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A regularized discriminative framework for EEG analysis with application to brain-computer interface.

机译:脑电分析的正规化判别框架,应用于脑机接口。

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摘要

We propose a framework for signal analysis of electroencephalography (EEG) that unifies tasks such as feature extraction, feature selection, feature combination, and classification, which are often independently tackled conventionally, under a regularized empirical risk minimization problem. The features are automatically learned, selected and combined through a convex optimization problem. Moreover we propose regularizers that induce novel types of sparsity providing a new technique for visualizing EEG of subjects during tasks from a discriminative point of view. The proposed framework is applied to two typical BCI problems, namely the P300 speller system and the prediction of self-paced finger tapping. In both datasets the proposed approach shows competitive performance against conventional methods, while at the same time the results are easier accessible to neurophysiological interpretation. Note that our novel approach is not only applicable to Brain imaging beyond EEG but also to general discriminative modeling of experimental paradigms beyond BCI.
机译:我们提出了一个脑电图(EEG)信号分析框架,该框架统一了诸如特征提取,特征选择,特征组合和分类之类的任务,这些任务通常是在常规化的经验风险最小化问题下常规地独立解决的。通过凸优化问题自动学习,选择和组合特征。此外,我们提出了诱导稀疏性的新类型的正则化方法,从而提供了一种从判别角度可视化任务期间的脑电图的新技术。所提出的框架适用于两个典型的BCI问题,即P300拼写系统和自定进度的手指敲击的预测。在两个数据集中,所提出的方法均显示出与常规方法相比的竞争性能,同时,结果更易于神经生理学解释。请注意,我们的新颖方法不仅适用于EEG以外的脑成像,而且适用于BCI以外的实验范式的一般判别建模。

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