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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >A Beamformer-Particle Filter Framework for Localization of Correlated EEG Sources
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A Beamformer-Particle Filter Framework for Localization of Correlated EEG Sources

机译:用于相关脑电信号源定位的Beamformer-Particle过滤器框架

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摘要

Electroencephalography (EEG)-based brain computer interface (BCI) is the most studied noninvasive interface to build a direct communication pathway between the brain and an external device. However, correlated noises in EEG measurements still constitute a significant challenge. Alternatively, building BCIs based on filtered brain activity source signals instead of using their surface projections, obtained from the noisy EEG signals, is a promising and not well-explored direction. In this context, finding the locations and waveforms of inner brain sources represents a crucial task for advancing source-based noninvasive BCI technologies. In this paper, we propose a novel multicore beamformer particle filter (multicore BPF) to estimate the EEG brain source spatial locations and their corresponding waveforms. In contrast to conventional (single-core) beamforming spatial filters, the developed multicore BPF considers explicitly temporal correlation among the estimated brain sources by suppressing activation from regions with interfering coherent sources. The hybrid multicore BPF brings together the advantages of both deterministic and Bayesian inverse problem algorithms in order to improve the estimation accuracy. It solves the brain activity localization problem without prior information about approximate areas of source locations. Moreover, the multicore BPF reduces the dimensionality of the problem to half compared with the PF solution, thus alleviating the curse of dimensionality problem. The results, based on generated and real EEG data, show that the proposed framework recovers correctly the dominant sources of brain activity.
机译:基于脑电图(EEG)的大脑计算机接口(BCI)是研究最多的非侵入性接口,可在大脑和外部设备之间建立直接的通信路径。然而,脑电图测量中的相关噪声仍然构成重大挑战。或者,基于滤波后的大脑活动源信号而不是使用从嘈杂的EEG信号中获得的表面投影来构建BCI,是一个有希望且尚未充分探索的方向。在这种情况下,找到内部大脑源的位置和波形代表着推进基于源的无创BCI技术的关键任务。在本文中,我们提出了一种新颖的多核波束形成器粒子滤波器(多核BPF)来估计EEG脑源空间位置及其相应波形。与常规(单核)波束形成空间滤波器相反,已开发的多核BPF通过抑制来自具有干扰性相干源的区域的激活,明确地考虑了估计的脑源之间的时间相关性。混合多核BPF结合了确定性和贝叶斯逆问题算法的优势,以提高估计精度。它可以解决大脑活动定位问题,而无需事先提供有关源位置大致区域的信息。此外,与PF解决方案相比,多核BPF将问题的维数减少了一半,从而减轻了维数问题的诅咒。基于生成的和真实的EEG数据的结果表明,提出的框架正确地恢复了大脑活动的主要来源。

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