Proceedings of the 41st IEEE Conference on Decision and Control, 2002.
DOI: 10.1109/cdc.2002.1184216
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Novel electrocardiogram segmentation algorithm using a multiple model adaptive estimator

Abstract: This thesis presents a novel electrocardiogram (ECG) processing algorithm design based on a Multiple Model Adaptive Estimator (MMAE) for a physiological monitoring system. Twenty ECG signals from the MIT ECG database were used to develop system models for the MMAE. The P-wave, QRS complex, and T-wave segments from the characteristic ECG waveform were used to develop hypothesis filter banks. By adding a threshold filter-switching algorithm to the conventional MMAE implementation, the device mimics the way a hum… Show more

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Cited by 6 publications
(2 citation statements)
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“…Hoffman et al [25] presentan un algoritmo de procesamiento de ECG basado en Multiple Model Adaptive Estimator (MMAE) para un sistema de vigilancia fisiológica, utilizando veinte señales de la base de datos de ECG del MIT.…”
Section: Estado Del Arteunclassified
“…Hoffman et al [25] presentan un algoritmo de procesamiento de ECG basado en Multiple Model Adaptive Estimator (MMAE) para un sistema de vigilancia fisiológica, utilizando veinte señales de la base de datos de ECG del MIT.…”
Section: Estado Del Arteunclassified
“…There had been different machine learning algorithms, namely, Support Vector Regression (SVR), Support Vector Machines (SVM), Sequential Minimal Optimization (SVR), and binary classification models, implemented. Additionally, there are many Low Level Descriptors (LLD) for voice signal feature extraction, and statistical functions, which are available in openSMILE software [25], [26]. However, they do not explicitly show, which feature extraction methods and algorithms are constituting to the estimation of factors between HR and human speech, [27].…”
Section: Literature Reviewmentioning
confidence: 99%