Automatic Calibration in Adaptive Filters to EMG Signals Processing

In this work, an adaptive filtering that includes an automatic calibration process to acquire EMG (electromyography) signals has been implemented. We propose a novel technique called “autocalibration” to minimize the noise generated by the contact of the skin with sensors used (electrodes) during ph...

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Bibliographic Details
Main Authors: Christian Salamea Palacios, Santiago Luna Romero
Format: Article
Language:Spanish
Published: Universitat Politecnica de Valencia 2019-03-01
Series:Revista Iberoamericana de Automática e Informática Industrial RIAI
Subjects:
Online Access:https://polipapers.upv.es/index.php/RIAI/article/view/10204
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spelling doaj-cbd057633de44b65a7f6379a203e48572021-04-02T13:59:29ZspaUniversitat Politecnica de ValenciaRevista Iberoamericana de Automática e Informática Industrial RIAI1697-79121697-79202019-03-0116223223710.4995/riai.2018.102047159Automatic Calibration in Adaptive Filters to EMG Signals ProcessingChristian Salamea Palacios0Santiago Luna Romero1Universidad Politécnica de MadridUniversidad Politécnica SalesianaIn this work, an adaptive filtering that includes an automatic calibration process to acquire EMG (electromyography) signals has been implemented. We propose a novel technique called “autocalibration” to minimize the noise generated by the contact of the skin with sensors used (electrodes) during physical activities development. Adaptive filtering has been used considering both, physical activity and sweating in persons are factors that could change the measurement conditions. To evaluate the proposed technique, a group of persons have been selected to develop physical activities for different intensities of effort. Relative improvement of the signal to noise ratio (RI-SNR) has been used to compare both, the proposed technique and adaptive filters that use “white noise” as reference signal. This work is focused on Wiener, LMS and RLS estimators, with measurements performed before and after of the physical activities. Applying the autocalibration process in adaptive filtering, an improvement up to 45,49% compared with the corresponding that uses “white noise” for calibration has been obtained.https://polipapers.upv.es/index.php/RIAI/article/view/10204Filtrado AdaptativoAnálisis y Tratamiento de SeñalesControl de Variables Fisiológicas y ClínicasPerturbacionesRuido
collection DOAJ
language Spanish
format Article
sources DOAJ
author Christian Salamea Palacios
Santiago Luna Romero
spellingShingle Christian Salamea Palacios
Santiago Luna Romero
Automatic Calibration in Adaptive Filters to EMG Signals Processing
Revista Iberoamericana de Automática e Informática Industrial RIAI
Filtrado Adaptativo
Análisis y Tratamiento de Señales
Control de Variables Fisiológicas y Clínicas
Perturbaciones
Ruido
author_facet Christian Salamea Palacios
Santiago Luna Romero
author_sort Christian Salamea Palacios
title Automatic Calibration in Adaptive Filters to EMG Signals Processing
title_short Automatic Calibration in Adaptive Filters to EMG Signals Processing
title_full Automatic Calibration in Adaptive Filters to EMG Signals Processing
title_fullStr Automatic Calibration in Adaptive Filters to EMG Signals Processing
title_full_unstemmed Automatic Calibration in Adaptive Filters to EMG Signals Processing
title_sort automatic calibration in adaptive filters to emg signals processing
publisher Universitat Politecnica de Valencia
series Revista Iberoamericana de Automática e Informática Industrial RIAI
issn 1697-7912
1697-7920
publishDate 2019-03-01
description In this work, an adaptive filtering that includes an automatic calibration process to acquire EMG (electromyography) signals has been implemented. We propose a novel technique called “autocalibration” to minimize the noise generated by the contact of the skin with sensors used (electrodes) during physical activities development. Adaptive filtering has been used considering both, physical activity and sweating in persons are factors that could change the measurement conditions. To evaluate the proposed technique, a group of persons have been selected to develop physical activities for different intensities of effort. Relative improvement of the signal to noise ratio (RI-SNR) has been used to compare both, the proposed technique and adaptive filters that use “white noise” as reference signal. This work is focused on Wiener, LMS and RLS estimators, with measurements performed before and after of the physical activities. Applying the autocalibration process in adaptive filtering, an improvement up to 45,49% compared with the corresponding that uses “white noise” for calibration has been obtained.
topic Filtrado Adaptativo
Análisis y Tratamiento de Señales
Control de Variables Fisiológicas y Clínicas
Perturbaciones
Ruido
url https://polipapers.upv.es/index.php/RIAI/article/view/10204
work_keys_str_mv AT christiansalameapalacios automaticcalibrationinadaptivefilterstoemgsignalsprocessing
AT santiagolunaromero automaticcalibrationinadaptivefilterstoemgsignalsprocessing
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