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Bayesian Machine Learning: EEG/MEG signal processing measurements

机译:贝叶斯机器学习:EEG / MEG信号处理测量

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Electroencephalography (EEG) and magnetoencephalog?raphy (MEG) are the most common noninvasive brain-imaging techniques for monitoring electrical brain activity and inferring brain function. The central goal of EEG/MEG analysis is to extract informative brain spatiotemporal?spectral patterns or to infer functional connectivity between different brain areas, which is directly useful for neuroscience or clinical investigations. Due to its potentially complex nature [such as nonstationarity, high dimensionality, subject variability, and low signal-to-noise ratio (SNR)], EEG/MEG signal processing poses some great challenges for researchers. These challenges can be addressed in a principled manner via Bayesian machine learning (BML). BML is an emerging field that integrates Bayesian statistics, variational methods, and machine-learning techniques to solve various problems from regression, prediction, outlier detection, feature extraction, and classification. BML has recently gained increasing attention and widespread successes in signal processing and big-data analytics, such as in source reconstruction, compressed sensing, and information fusion. To review recent advances and to foster new research ideas, we provide a tutorial on several important emerging BML research topics in EEG/MEG signal processing and present representative examples in EEG/MEG applications.
机译:脑电图(EEG)和脑磁图(MEG)是用于监视脑电活动和推断脑功能的最常见的非侵入性脑成像技术。 EEG / MEG分析的主要目标是提取信息丰富的大脑时空光谱模式或推断不同大脑区域之间的功能连接性,这对神经科学或临床研究直接有用。由于其潜在的复杂性质(例如不稳定,高维度,主题可变性和低信噪比(SNR)),EEG / MEG信号处理给研究人员带来了巨大挑战。这些挑战可以通过贝叶斯机器学习(BML)原则上解决。 BML是一个新兴领域,它集成了贝叶斯统计,变分方法和机器学习技术,可以解决回归,预测,离群值检测,特征提取和分类等各种问题。 BML最近在信号处理和大数据分析(例如源重构,压缩感测和信息融合)中获得了越来越多的关注并取得了广泛的成功。为了回顾最新进展并培育新的研究思路,我们提供了有关EEG / MEG信号处理中几个重要的新兴BML研究主题的教程,并介绍了EEG / MEG应用程序中的代表性示例。

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