Adjacent Channel Weight Dependable RLS Adaptive Filter With VMD Based Artifact Removal Mechanism in Fetal ECG Separation
Abstract:
This paper proposes an adjacent channel weight dependable recursive least square adaptive filter (ACWD-RLS) with variational mode decomposition (VMD) based artifact removal mechanism in separating the fetal ECG (FECG) components from the pregnant mother abdominal ECG (AECG). This approach requires the two abdominal, and a single thorax ECG to extract the FECG component present in the AECG. The algorithm uses three independent VMD decomposition algorithms in which one decomposes the thorax ECG while the other two decompose the abdominal ECGs of adjacent channels. The presence of baseline wander (BW) and powerline interference (PLI) is detected and eliminated from the modes obtained from each VMD algorithm. The work also proposes an ACWD-RLS filter that contains two sections of the RLS filter namely the main section and secondary section, where the weighted update in the main section depends on the weight estimated in the secondary section. The performance of the VMD-based artifact removal algorithm in suppressing the BW and PLI artifacts was evaluated utilizing the MIT-BIH arrhythmia and MIT-BIH noise stress dataset, while the Synthetic database of Physionet and real-world Daisy dataset was utilized in the validation of the proposed ACWD-RLS approach in fetal ECG extraction. The proposed VMD-based BW and PLI artifact removal mechanism results in a corresponding coefficient and output signal-to-noise ratio of 0.988 and 14.83 dB respectively with a signal to BW noise ratio of 5 dB. The evaluation results show that the algorithm yields a PDR of 95.54% and 97.56% in real-world Daisy and Synthetic datasets respectively.
Index Terms — Fetal ECG (FECG), adjacent channel, adaptive filter, RLS, variational mode decomposition (VMD), artifact removal, biomedical signal processing.
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