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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Spectral Estimation of Nonstationary EEG Using Particle Filtering With Application to Event-Related Desynchronization (ERD)
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Spectral Estimation of Nonstationary EEG Using Particle Filtering With Application to Event-Related Desynchronization (ERD)

机译:基于粒子滤波的非平稳脑电频谱估计及其在事件相关去同步(ERD)中的应用

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摘要

This paper proposes non-Gaussian models for parametric spectral estimation with application to event-related desynchronization (ERD) estimation of nonstationary EEG. Existing approaches for time-varying spectral estimation use time-varying autoregressive (TVAR) state-space models with Gaussian state noise. The parameter estimation is solved by a conventional Kalman filtering. This study uses non-Gaussian state noise to model autoregressive (AR) parameter variation with estimation by a Monte Carlo particle filter (PF). Use of non-Gaussian noise such as heavy-tailed distribution is motivated by its ability to track abrupt and smooth AR parameter changes, which are inadequately modeled by Gaussian models. Thus, more accurate spectral estimates and better ERD tracking can be obtained. This study further proposes a non-Gaussian state space formulation of time-varying autoregressive moving average (TVARMA) models to improve the spectral estimation. Simulation on TVAR process with abrupt parameter variation shows superior tracking performance of non-Gaussian models. Evaluation on motor-imagery EEG data shows that the non-Gaussian models provide more accurate detection of abrupt changes in alpha rhythm ERD. Among the proposed non-Gaussian models, TVARMA shows better spectral representations while maintaining reasonable good ERD tracking performance.
机译:本文提出了用于参数频谱估计的非高斯模型,并将其应用于非平稳脑电的事件相关去同步(ERD)估计。时变频谱估计的现有方法使用具有高斯状态噪声的时变自回归(TVAR)状态空间模型。参数估计通过常规的卡尔曼滤波解决。这项研究使用非高斯状态噪声来建模自回归(AR)参数变化,并通过蒙特卡洛粒子滤波器(PF)进行估计。非高斯噪声(如重尾分布)的使用是由于它具有跟踪突变和平滑的AR参数变化的能力,而高斯模型对此建模不足。因此,可以获得更准确的光谱估计和更好的ERD跟踪。这项研究进一步提出了时变自回归移动平均(TVARMA)模型的非高斯状态空间公式,以改善频谱估计。对具有突然参数变化的TVAR过程进行的仿真表明,非高斯模型具有出色的跟踪性能。对运动图像EEG数据的评估表明,非高斯模型可以更准确地检测出α节奏ERD的突变。在提出的非高斯模型中,TVARMA显示了更好的频谱表示,同时保持了合理的良好ERD跟踪性能。

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