鲁棒电生理源成像中基于相关熵的不当似然模型

Yuanhao Li;Badong Chen;Zhongxu Hu;Keita Suzuki;Wenjun Bai;Yasuharu Koike;Okito Yamashita
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引用次数: 0

摘要

贝叶斯学习为解决电生理源成像任务提供了一个统一的框架。从这个角度来看,现有的源成像算法利用观测噪声的高斯假设来构建贝叶斯推理的似然函数。然而,大脑活动的电磁测量通常受到各种伪影的影响,导致观察噪声可能是非高斯分布。因此,传统的高斯似然模型是一个次优的选择,为现实世界的源成像任务。在本研究中,我们旨在通过提出一种新的对非高斯噪声具有鲁棒性的似然模型来解决这一问题。在鲁棒最大熵准则的激励下,我们提出了一种新的考虑噪声假设的不合理分布模型。利用这种新的噪声分布构造鲁棒似然函数,并与分层先验分布相结合,通过变分推理估计源活动。特别地,采用分数匹配来确定不当似然模型的超参数。对所提出的噪声假设与传统高斯模型进行了综合性能评价。仿真结果表明,该方法通过设计已知的地真值,可以实现更精确的震源重构。真实数据集也证明了我们的新方法在视觉感知任务中的优越性。本研究为贝叶斯源成像提供了新的主干,有助于贝叶斯源成像在现实世界中嘈杂脑信号的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correntropy-Based Improper Likelihood Model for Robust Electrophysiological Source Imaging
Bayesian learning provides a unified skeleton to solve the electrophysiological source imaging task. From this perspective, existing source imaging algorithms utilize the Gaussian assumption for the observation noise to build the likelihood function for Bayesian inference. However, the electromagnetic measurements of brain activity are usually affected by miscellaneous artifacts, leading to a potentially non-Gaussian distribution for the observation noise. Hence the conventional Gaussian likelihood model is a suboptimal choice for the real-world source imaging task. In this study, we aim to solve this problem by proposing a new likelihood model which is robust with respect to non-Gaussian noises. Motivated by the robust maximum correntropy criterion, we propose a new improper distribution model concerning the noise assumption. This new noise distribution is leveraged to structure a robust likelihood function and integrated with hierarchical prior distributions to estimate source activities by variational inference. In particular, the score matching is adopted to determine the hyperparameters for the improper likelihood model. A comprehensive performance evaluation is performed to compare the proposed noise assumption to the conventional Gaussian model. Simulation results show that, the proposed method can realize more precise source reconstruction by designing known ground-truth. The real-world dataset also demonstrates the superiority of our new method with the visual perception task. This study provides a new backbone for Bayesian source imaging, which would facilitate its application using real-world noisy brain signal.
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