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Particle filtering, beamforming and multiple signal classification for the analysis of magnetoencephalography time series: A comparison of algorithms

机译:用于脑磁图时间序列分析的粒子滤波,波束成形和多信号分类:算法比较

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摘要

We present a comparison of three methods for the solution of the magnetoencephalography inverse problem. The methods are: a linearly constrained minimum variance beamformer, an algorithm implementing multiple signal classification with recursively applied projection and a particle filter for Bayesian tracking. Synthetic data with neurophysiological significance are analyzed by the three methods to recover position, orientation and amplitude of the active sources. Finally, a real data set evoked by a simple auditory stimulus is considered.
机译:我们比较了三种解决脑磁图反问题的方法。这些方法是:线性约束最小方差波束形成器,使用递归应用的投影实现多信号分类的算法以及用于贝叶斯跟踪的粒子滤波器。通过三种方法分析具有神经生理学意义的合成数据,以恢复活性源的位置,方向和幅度。最后,考虑由简单听觉刺激引起的真实数据集。

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