Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches

In this paper, a stride detector algorithm combined with a technique inspired by zero velocity update (ZUPT) is proposed to reconstruct the trajectory of a pedestrian from an ankle-mounted inertial device. This innovative approach is based on sensor alignment and machine learning. It is able to dete...

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Main Authors: Bertrand Beaufils, Frédéric Chazal, Marc Grelet, Bertrand Michel
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Sensors
Subjects:
imu
Online Access:https://www.mdpi.com/1424-8220/19/20/4491
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spelling doaj-01a19c8c3f7d40808383192afe6f3cbd2020-11-24T21:18:39ZengMDPI AGSensors1424-82202019-10-011920449110.3390/s19204491s19204491Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning ApproachesBertrand Beaufils0Frédéric Chazal1Marc Grelet2Bertrand Michel3Sysnav, 57 Rue de Montigny, 27200 Vernon, FranceInria Saclay, team DataShape, 1 Rue Honoré d’Estienne d’Orves, 91120 Palaiseau, FranceSysnav, 57 Rue de Montigny, 27200 Vernon, FranceInria Saclay, team DataShape, 1 Rue Honoré d’Estienne d’Orves, 91120 Palaiseau, FranceIn this paper, a stride detector algorithm combined with a technique inspired by zero velocity update (ZUPT) is proposed to reconstruct the trajectory of a pedestrian from an ankle-mounted inertial device. This innovative approach is based on sensor alignment and machine learning. It is able to detect 100% of both normal walking strides and more than 97% of atypical strides such as small steps, side steps, and backward walking that existing methods can hardly detect. This approach is also more robust in critical situations, when for example the wearer is sitting and moving the ankle or when the wearer is bicycling (less than two false detected strides per hour on average). As a consequence, the algorithm proposed for trajectory reconstruction achieves much better performances than existing methods for daily life contexts, in particular in narrow areas such as in a house. The computed stride trajectory contains essential information for recognizing the activity (atypical stride, walking, running, and stairs). For this task, we adopt a machine learning approach based on descriptors of these trajectories, which is shown to be robust to a large of variety of gaits. We tested our algorithm on recordings of healthy adults and children, achieving more than 99% success. The algorithm also achieved more than 97% success in challenging situations recorded by children suffering from movement disorders. Compared to most algorithms in the literature, this original method does not use a fixed-size sliding window but infers this last in an adaptive way.https://www.mdpi.com/1424-8220/19/20/4491machine learningactivity recognitionstride detectorimudead reckoningpedestrian navigation
collection DOAJ
language English
format Article
sources DOAJ
author Bertrand Beaufils
Frédéric Chazal
Marc Grelet
Bertrand Michel
spellingShingle Bertrand Beaufils
Frédéric Chazal
Marc Grelet
Bertrand Michel
Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
Sensors
machine learning
activity recognition
stride detector
imu
dead reckoning
pedestrian navigation
author_facet Bertrand Beaufils
Frédéric Chazal
Marc Grelet
Bertrand Michel
author_sort Bertrand Beaufils
title Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
title_short Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
title_full Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
title_fullStr Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
title_full_unstemmed Robust Stride Detector from Ankle-Mounted Inertial Sensors for Pedestrian Navigation and Activity Recognition with Machine Learning Approaches
title_sort robust stride detector from ankle-mounted inertial sensors for pedestrian navigation and activity recognition with machine learning approaches
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-10-01
description In this paper, a stride detector algorithm combined with a technique inspired by zero velocity update (ZUPT) is proposed to reconstruct the trajectory of a pedestrian from an ankle-mounted inertial device. This innovative approach is based on sensor alignment and machine learning. It is able to detect 100% of both normal walking strides and more than 97% of atypical strides such as small steps, side steps, and backward walking that existing methods can hardly detect. This approach is also more robust in critical situations, when for example the wearer is sitting and moving the ankle or when the wearer is bicycling (less than two false detected strides per hour on average). As a consequence, the algorithm proposed for trajectory reconstruction achieves much better performances than existing methods for daily life contexts, in particular in narrow areas such as in a house. The computed stride trajectory contains essential information for recognizing the activity (atypical stride, walking, running, and stairs). For this task, we adopt a machine learning approach based on descriptors of these trajectories, which is shown to be robust to a large of variety of gaits. We tested our algorithm on recordings of healthy adults and children, achieving more than 99% success. The algorithm also achieved more than 97% success in challenging situations recorded by children suffering from movement disorders. Compared to most algorithms in the literature, this original method does not use a fixed-size sliding window but infers this last in an adaptive way.
topic machine learning
activity recognition
stride detector
imu
dead reckoning
pedestrian navigation
url https://www.mdpi.com/1424-8220/19/20/4491
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AT bertrandmichel robuststridedetectorfromanklemountedinertialsensorsforpedestriannavigationandactivityrecognitionwithmachinelearningapproaches
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