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On-line EEG Denoising and Cleaning Using Correlated Sparse Recovery and Active Learning

机译:使用相关的稀疏恢复和主动学习进行在线脑电信号降噪和清洁

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摘要

We have developed two new methods that use sparse recovery and active learning techniques for near real-time artifact identification and removal in EEG recordings. The first algorithm, called Correlated Sparse Signal Recovery (CSSR) addresses the problem of structured sparse signal recovery when statistical rather than exact properties describing the structure of the signal are appropriate, as in the elimination of eye movement artifacts; such tasks cannot be done efficiently using structured models that assume a common sparsity profile of fixed groups of components. Our algorithm learns structured sparse coefficients in a Bayesian paradigm. Using it, we have successfully identified and subtracted eye movement (structured) artifacts in real EEG recordings resulting in minimal data loss. Our method outperforms ICA and standard sparse recovery algorithms by preserving both spectral and complexity properties of the denoised EEG. Our second method uses a new active selection algorithm that we call Output-based Active Selection (OAS). When applied to the task of detection of EEG epochs containing other non-structured artifacts from an ensemble of detectors, OAS boosts accuracy of the ensemble from 91% to 97.5% with only 10% active labels. Our methods can also be applied to real-time artifact removal in magnetoencephalography (MEG) and blood pressure signals.
机译:我们已经开发了两种使用稀疏恢复和主动学习技术的新方法,用于在EEG记录中进行近实时伪像识别和清除。第一种算法称为“相关的稀疏信号恢复”(CSSR),它解决了结构化的稀疏信号恢复的问题,这种统计方法是适当的,而不是描述信号结构的精确属性,例如消除眼动伪影;使用假定固定组组件具有通用稀疏性的结构化模型,无法有效地完成此类任务。我们的算法学习贝叶斯范式中的结构化稀疏系数。使用它,我们已经成功地识别并减去了真实EEG记录中的眼动(结构化)伪像,从而将数据损失降至最低。通过保留去噪脑电图的频谱和复杂性,我们的方法优于ICA和标准稀疏恢复算法。我们的第二种方法使用一种新的主​​动选择算法,我们将其称为基于输出的主动选择(OAS)。当应用于检测器集合中包含其他非结构化伪像的EEG历元的检测任务时,OAS仅使用10%的活动标记就可以将集合的准确性从91%提高到97.5%。我们的方法还可以应用于实时脑磁图(MEG)和血压信号中的伪影去除。

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