2023
DOI: 10.9717/kmms.2023.26.1.075
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Development of signal feature extraction system for ECG-Based Heart Disease Classification

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Cited by 1 publication
(3 citation statements)
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“…After the MW processing and normalization, the data were transformed from time to frequency domain using a Fourier synchro-squeezed transform (FSST) [20][21][22][23]. The analysis of the FSST was performed using the Kaiser window, and the window design was performed using the MATLAB R2021b FSST function tool.…”
Section: Phase-sensitive Data Processingmentioning
confidence: 99%
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“…After the MW processing and normalization, the data were transformed from time to frequency domain using a Fourier synchro-squeezed transform (FSST) [20][21][22][23]. The analysis of the FSST was performed using the Kaiser window, and the window design was performed using the MATLAB R2021b FSST function tool.…”
Section: Phase-sensitive Data Processingmentioning
confidence: 99%
“…To verify the superiority of the proposed techniques, six deep learning models were designed by applying different preprocessing methods, and training was conducted using data from 20 subjects. Six models are Convolutional and recurrent networks (1dCNN+LSTM) [31], Single window LSTM (SWL) [27], Single window bi-LSTM (SWbL) [28], Single window FSST bi-LSTM (SWbL+ FSST) [20], Multi window FSST bi-LSTM (MWbL+FSST), Multi window phase sensitive bi-LSTM (MWbL+PS).…”
Section: E Classification Deep Learning Modelmentioning
confidence: 99%
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