Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring

Sensors integrated into objects of everyday life potentially allow unobtrusive health monitoring at home. However, since the coupling of sensors and subject is not as well-defined as compared to a clinical setting, the signal quality is much more variable and can be disturbed significantly by motion...

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Main Authors: Christoph Hoog Antink, Florian Schulz, Steffen Leonhardt, Marian Walter
Format: Article
Language:English
Published: MDPI AG 2017-12-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/18/1/38
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spelling doaj-5ec6d00a715b490cac6545966ee214cd2020-11-25T00:29:48ZengMDPI AGSensors1424-82202017-12-011813810.3390/s18010038s18010038Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health MonitoringChristoph Hoog Antink0Florian Schulz1Steffen Leonhardt2Marian Walter3Philips Chair for Medical Information Technology, RWTH Aachen University, 52074 Aachen, GermanyPhilips Chair for Medical Information Technology, RWTH Aachen University, 52074 Aachen, GermanyPhilips Chair for Medical Information Technology, RWTH Aachen University, 52074 Aachen, GermanyPhilips Chair for Medical Information Technology, RWTH Aachen University, 52074 Aachen, GermanySensors integrated into objects of everyday life potentially allow unobtrusive health monitoring at home. However, since the coupling of sensors and subject is not as well-defined as compared to a clinical setting, the signal quality is much more variable and can be disturbed significantly by motion artifacts. One way of tackling this challenge is the combined evaluation of multiple channels via sensor fusion. For robust and accurate sensor fusion, analyzing the influence of motion on different modalities is crucial. In this work, a multimodal sensor setup integrated into an armchair is presented that combines capacitively coupled electrocardiography, reflective photoplethysmography, two high-frequency impedance sensors and two types of ballistocardiography sensors. To quantify motion artifacts, a motion protocol performed by healthy volunteers is recorded with a motion capture system, and reference sensors perform cardiorespiratory monitoring. The shape-based signal-to-noise ratio SNR S is introduced and used to quantify the effect on motion on different sensing modalities. Based on this analysis, an optimal combination of sensors and fusion methodology is developed and evaluated. Using the proposed approach, beat-to-beat heart-rate is estimated with a coverage of 99.5% and a mean absolute error of 7.9 ms on 425 min of data from seven volunteers in a proof-of-concept measurement scenario.https://www.mdpi.com/1424-8220/18/1/38motion artifactsunobtrusive sensingsensor fusionmotion captureheart ratemedical signal processingbiosignalsambient assisted living
collection DOAJ
language English
format Article
sources DOAJ
author Christoph Hoog Antink
Florian Schulz
Steffen Leonhardt
Marian Walter
spellingShingle Christoph Hoog Antink
Florian Schulz
Steffen Leonhardt
Marian Walter
Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
Sensors
motion artifacts
unobtrusive sensing
sensor fusion
motion capture
heart rate
medical signal processing
biosignals
ambient assisted living
author_facet Christoph Hoog Antink
Florian Schulz
Steffen Leonhardt
Marian Walter
author_sort Christoph Hoog Antink
title Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
title_short Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
title_full Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
title_fullStr Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
title_full_unstemmed Motion Artifact Quantification and Sensor Fusion for Unobtrusive Health Monitoring
title_sort motion artifact quantification and sensor fusion for unobtrusive health monitoring
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2017-12-01
description Sensors integrated into objects of everyday life potentially allow unobtrusive health monitoring at home. However, since the coupling of sensors and subject is not as well-defined as compared to a clinical setting, the signal quality is much more variable and can be disturbed significantly by motion artifacts. One way of tackling this challenge is the combined evaluation of multiple channels via sensor fusion. For robust and accurate sensor fusion, analyzing the influence of motion on different modalities is crucial. In this work, a multimodal sensor setup integrated into an armchair is presented that combines capacitively coupled electrocardiography, reflective photoplethysmography, two high-frequency impedance sensors and two types of ballistocardiography sensors. To quantify motion artifacts, a motion protocol performed by healthy volunteers is recorded with a motion capture system, and reference sensors perform cardiorespiratory monitoring. The shape-based signal-to-noise ratio SNR S is introduced and used to quantify the effect on motion on different sensing modalities. Based on this analysis, an optimal combination of sensors and fusion methodology is developed and evaluated. Using the proposed approach, beat-to-beat heart-rate is estimated with a coverage of 99.5% and a mean absolute error of 7.9 ms on 425 min of data from seven volunteers in a proof-of-concept measurement scenario.
topic motion artifacts
unobtrusive sensing
sensor fusion
motion capture
heart rate
medical signal processing
biosignals
ambient assisted living
url https://www.mdpi.com/1424-8220/18/1/38
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AT steffenleonhardt motionartifactquantificationandsensorfusionforunobtrusivehealthmonitoring
AT marianwalter motionartifactquantificationandsensorfusionforunobtrusivehealthmonitoring
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