An Electrocardiogram Signal Preprocessing Strategy in LSTM Algorithm for Biometric Recognition
Fenny Winda Rahayu(1), Mohammad Reza Faisal(2*), Dodon Turianto Nugrahadi(3), Radityo Adi Nugroho(4), Muliadi Muliadi(5), Sri Redjeki(6)
(1) Lambung Mangkurat University
(2) Lambung Mangkurat University
(3) Lambung Mangkurat University
(4) Lambung Mangkurat University
(5) Lambung Mangkurat University
(6) Indonesia Digital Technology University
(*) Corresponding Author
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DOI: https://doi.org/10.22146/ijccs.93895
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