Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle

Over half of older adult falls are caused by tripping. Many of these trips are likely due to obstacles present on walkways that put older adults or other individuals with low foot clearance at risk. Yet, Minimum Foot Clearance (MFC) values have not been measured in real-world settings and existing m...

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Main Authors: Ghazaleh Delfi, Megan Kamachi, Tilak Dutta
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/3/976
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spelling doaj-58bc949f0eb34678972cb71c5656ffc52021-02-03T00:00:04ZengMDPI AGSensors1424-82202021-02-012197697610.3390/s21030976Development of an Automated Minimum Foot Clearance Measurement System: Proof of PrincipleGhazaleh Delfi0Megan Kamachi1Tilak Dutta2KITE—Toronto Rehabilitation Institute, University Health Network, Toronto, ON M5G 2A2, CanadaKITE—Toronto Rehabilitation Institute, University Health Network, Toronto, ON M5G 2A2, CanadaKITE—Toronto Rehabilitation Institute, University Health Network, Toronto, ON M5G 2A2, CanadaOver half of older adult falls are caused by tripping. Many of these trips are likely due to obstacles present on walkways that put older adults or other individuals with low foot clearance at risk. Yet, Minimum Foot Clearance (MFC) values have not been measured in real-world settings and existing methods make it difficult to do so. In this paper, we present the Minimum Foot Clearance Estimation (MFCE) system that includes a device for collecting calibrated video data from pedestrians on outdoor walkways and a computer vision algorithm for estimating MFC values for these individuals. This system is designed to be positioned at ground level next to a walkway to efficiently collect sagittal plane videos of many pedestrians’ feet, which is then processed offline to obtain MFC estimates. Five-hundred frames of video data collected from 50 different pedestrians was used to train (370 frames) and test (130 frames) a convolutional neural network. Finally, data from 10 pedestrians was analyzed manually by three raters and compared to the results of the network. The footwear detection network had an Intersection over Union of 85% and was able to find the bottom of a segmented shoe with a 3-pixel average error. Root Mean Squared (RMS) errors for the manual and automated methods for estimating MFC values were 2.32 mm, and 3.70 mm, respectively. Future work will compare the accuracy of the MFCE system to a gold standard motion capture system and the system will be used to estimate the distribution of MFC values for the population.https://www.mdpi.com/1424-8220/21/3/976computer visionfallsgaitmarker-less gait analysisminimum foot clearancemotion capture
collection DOAJ
language English
format Article
sources DOAJ
author Ghazaleh Delfi
Megan Kamachi
Tilak Dutta
spellingShingle Ghazaleh Delfi
Megan Kamachi
Tilak Dutta
Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
Sensors
computer vision
falls
gait
marker-less gait analysis
minimum foot clearance
motion capture
author_facet Ghazaleh Delfi
Megan Kamachi
Tilak Dutta
author_sort Ghazaleh Delfi
title Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
title_short Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
title_full Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
title_fullStr Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
title_full_unstemmed Development of an Automated Minimum Foot Clearance Measurement System: Proof of Principle
title_sort development of an automated minimum foot clearance measurement system: proof of principle
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-02-01
description Over half of older adult falls are caused by tripping. Many of these trips are likely due to obstacles present on walkways that put older adults or other individuals with low foot clearance at risk. Yet, Minimum Foot Clearance (MFC) values have not been measured in real-world settings and existing methods make it difficult to do so. In this paper, we present the Minimum Foot Clearance Estimation (MFCE) system that includes a device for collecting calibrated video data from pedestrians on outdoor walkways and a computer vision algorithm for estimating MFC values for these individuals. This system is designed to be positioned at ground level next to a walkway to efficiently collect sagittal plane videos of many pedestrians’ feet, which is then processed offline to obtain MFC estimates. Five-hundred frames of video data collected from 50 different pedestrians was used to train (370 frames) and test (130 frames) a convolutional neural network. Finally, data from 10 pedestrians was analyzed manually by three raters and compared to the results of the network. The footwear detection network had an Intersection over Union of 85% and was able to find the bottom of a segmented shoe with a 3-pixel average error. Root Mean Squared (RMS) errors for the manual and automated methods for estimating MFC values were 2.32 mm, and 3.70 mm, respectively. Future work will compare the accuracy of the MFCE system to a gold standard motion capture system and the system will be used to estimate the distribution of MFC values for the population.
topic computer vision
falls
gait
marker-less gait analysis
minimum foot clearance
motion capture
url https://www.mdpi.com/1424-8220/21/3/976
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AT megankamachi developmentofanautomatedminimumfootclearancemeasurementsystemproofofprinciple
AT tilakdutta developmentofanautomatedminimumfootclearancemeasurementsystemproofofprinciple
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