Correntropy-Based Improper Likelihood Model for Robust Electrophysiological Source Imaging
Yuanhao Li, Badong Chen, Zhongxu Hu, Keita Suzuki, Wenjun Bai, Yasuharu Koike, Okito Yamashita

TL;DR
This paper introduces a robust likelihood model based on correntropy for electrophysiological source imaging, effectively handling non-Gaussian noise artifacts in brain signal measurements.
Contribution
It proposes a novel improper distribution model for noise, improving Bayesian source imaging robustness against real-world non-Gaussian artifacts.
Findings
Enhanced source reconstruction accuracy in simulations
Superior performance on real-world brain data
Robustness to non-Gaussian noise artifacts
Abstract
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…
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Taxonomy
TopicsECG Monitoring and Analysis · EEG and Brain-Computer Interfaces · Blind Source Separation Techniques
