A Hypothesis Testing Approach to Nonstationary Source Separation
Abstract
The extraction of nonstationary signals from blind and semi-blind multivariate observations is a recurrent problem. Numerous algorithms have been developed for this problem, which are based on the exact or approximate joint diagonalization of second or higher order cumulant matrices/tensors of multichannel data. While a great body of research has been dedicated to joint diagonalization algorithms, the selection of the diagonalized matrix/tensor set remains highly problem-specific. Herein, various methods for nonstationarity identification are reviewed and a new general framework based on hypothesis testing is proposed, which results in a classification/clustering perspective to semi-blind source separation of nonstationary components. The proposed method is applied to noninvasive fetal ECG extraction, as case study.
Cite
@article{arxiv.2105.06958,
title = {A Hypothesis Testing Approach to Nonstationary Source Separation},
author = {Reza Sameni and Christian Jutten},
journal= {arXiv preprint arXiv:2105.06958},
year = {2021}
}
Comments
5 pages