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.
翻译:从盲和半盲多变观测中提取非静止信号是一个经常出现的问题,为这一问题制定了许多算法,这些算法基于对二等或二等或更高级多通道数据的累积矩阵/电流器的精确或近似联合对数法化,虽然大量研究致力于联合对等算法,但对二等和半盲多变观测的矩阵/电流集选仍高度针对具体问题。在这方面,对各种非静态识别方法进行了审查,并根据假设测试提出了新的一般框架,从而从分类/集群角度将非静态部件的半盲源分离为非静态部件。拟议方法作为案例研究,适用于非侵入性胎儿ECG提取。