Temporally Nonstationary Component Analysis; Application to Noninvasive
Fetal Electrocardiogram Extraction
- URL: http://arxiv.org/abs/2108.09353v1
- Date: Fri, 20 Aug 2021 20:31:19 GMT
- Title: Temporally Nonstationary Component Analysis; Application to Noninvasive
Fetal Electrocardiogram Extraction
- Authors: Fahimeh Jamshidian-Tehrani and Reza Sameni and Christian Jutten
- Abstract summary: The nonstationarity of the source signals can be used as a discriminative property for signal separation.
A semi-blind source separation algorithm is proposed for the extraction of temporally nonstationary components.
- Score: 12.861130760349631
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Objective: Mixtures of temporally nonstationary signals are very common in
biomedical applications. The nonstationarity of the source signals can be used
as a discriminative property for signal separation. Herein, a semi-blind source
separation algorithm is proposed for the extraction of temporally nonstationary
components from linear multichannel mixtures of signals and noises. Methods: A
hypothesis test is proposed for the detection and fusion of temporally
nonstationary events, by using ad hoc indexes for monitoring the first and
second order statistics of the innovation process. As proof of concept, the
general framework is customized and tested over noninvasive fetal cardiac
recordings acquired from the maternal abdomen, over publicly available
datasets, using two types of nonstationarity detectors: 1) a local power
variations detector, and 2) a model-deviations detector using the innovation
process properties of an extended Kalman filter. Results: The performance of
the proposed method is assessed in presence of white and colored noise, in
different signal-to-noise ratios. Conclusion and Significance: The proposed
scheme is general and it can be used for the extraction of nonstationary events
and sample deviations from a presumed model in multivariate data, which is a
recurrent problem in many machine learning applications.
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