In this paper we apply Independent Component Analysis to magnetocardiographic data recorded from the abdomen of pregnant women. In particular, we include a dimensionality reduction in the 'Cumulant Based Iterative Inversion' algorithm to achieve a 'signal subspace' subdivision, which enhances the algorithm's efficacy in resolving the signals of interest from the recorded traces. Our results show that the proposed two-step procedure is a powerful means for the extraction of the cardiac signals from the background noise and for a sharp separation of the baby's heart from the mother's.

'Signal subspace' blind source separation applied to fetal magnetocardiographic signals extraction

Porcaro C;Salustri C
2004

Abstract

In this paper we apply Independent Component Analysis to magnetocardiographic data recorded from the abdomen of pregnant women. In particular, we include a dimensionality reduction in the 'Cumulant Based Iterative Inversion' algorithm to achieve a 'signal subspace' subdivision, which enhances the algorithm's efficacy in resolving the signals of interest from the recorded traces. Our results show that the proposed two-step procedure is a powerful means for the extraction of the cardiac signals from the background noise and for a sharp separation of the baby's heart from the mother's.
2004
Independent Component Analysis
ICA
Fetal Magnetoencefalography
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/315407
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