Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.

BACKGROUND: Accelerometers can identify certain physical activity behaviours, but not the context in which they take place. This study investigates the feasibility of wearable cameras to objectively categorise the behaviour type and context of participants' accelerometer-identified episodes of...

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Main Authors: Doherty, A, Kelly, P, Kerr, J, Marshall, S, Oliver, M, Badland, H, Hamilton, A, Foster, C
Format: Journal article
Language:English
Published: 2013
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author Doherty, A
Kelly, P
Kerr, J
Marshall, S
Oliver, M
Badland, H
Hamilton, A
Foster, C
author_facet Doherty, A
Kelly, P
Kerr, J
Marshall, S
Oliver, M
Badland, H
Hamilton, A
Foster, C
author_sort Doherty, A
collection OXFORD
description BACKGROUND: Accelerometers can identify certain physical activity behaviours, but not the context in which they take place. This study investigates the feasibility of wearable cameras to objectively categorise the behaviour type and context of participants' accelerometer-identified episodes of activity. METHODS: Adults were given an Actical hip-mounted accelerometer and a SenseCam wearable camera (worn via lanyard). The onboard clocks on both devices were time-synchronised. Participants engaged in free-living activities for 3 days. Actical data were cleaned and episodes of sedentary, lifestyle-light, lifestyle-moderate, and moderate-to-vigorous physical activity (MVPA) were identified. Actical episodes were categorised according to their social and environmental context and Physical Activity (PA) compendium category as identified from time-matched SenseCam images. RESULTS: There were 212 days considered from 49 participants from whom SenseCam images and associated Actical data were captured. Using SenseCam images, behaviour type and context attributes were annotated for 386 (out of 3017) randomly selected episodes (such as walking/transportation, social/not-social, domestic/leisure). Across the episodes, 12 categories that aligned with the PA Compendium were identified, and 114 subcategory types were identified. Nineteen percent of episodes could not have their behaviour type and context categorized; 59% were outdoors versus 39% indoors; 33% of episodes were recorded as leisure time activities, with 33% transport, 18% domestic, and 15% occupational. 33% of the randomly selected episodes contained direct social interaction and 22% were in social situations where the participant wasn't involved in direct engagement. CONCLUSION: Wearable camera images offer an objective method to capture a spectrum of activity behaviour types and context across 81% of accelerometer-identified episodes of activity. Wearable cameras represent the best objective method currently available to categorise the social and environmental context of accelerometer-defined episodes of activity in free-living conditions.
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spelling oxford-uuid:a8e18bab-c30a-4c81-badd-8dbc2cd16df72022-03-27T03:04:35ZUsing wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:a8e18bab-c30a-4c81-badd-8dbc2cd16df7EnglishSymplectic Elements at Oxford2013Doherty, AKelly, PKerr, JMarshall, SOliver, MBadland, HHamilton, AFoster, C BACKGROUND: Accelerometers can identify certain physical activity behaviours, but not the context in which they take place. This study investigates the feasibility of wearable cameras to objectively categorise the behaviour type and context of participants' accelerometer-identified episodes of activity. METHODS: Adults were given an Actical hip-mounted accelerometer and a SenseCam wearable camera (worn via lanyard). The onboard clocks on both devices were time-synchronised. Participants engaged in free-living activities for 3 days. Actical data were cleaned and episodes of sedentary, lifestyle-light, lifestyle-moderate, and moderate-to-vigorous physical activity (MVPA) were identified. Actical episodes were categorised according to their social and environmental context and Physical Activity (PA) compendium category as identified from time-matched SenseCam images. RESULTS: There were 212 days considered from 49 participants from whom SenseCam images and associated Actical data were captured. Using SenseCam images, behaviour type and context attributes were annotated for 386 (out of 3017) randomly selected episodes (such as walking/transportation, social/not-social, domestic/leisure). Across the episodes, 12 categories that aligned with the PA Compendium were identified, and 114 subcategory types were identified. Nineteen percent of episodes could not have their behaviour type and context categorized; 59% were outdoors versus 39% indoors; 33% of episodes were recorded as leisure time activities, with 33% transport, 18% domestic, and 15% occupational. 33% of the randomly selected episodes contained direct social interaction and 22% were in social situations where the participant wasn't involved in direct engagement. CONCLUSION: Wearable camera images offer an objective method to capture a spectrum of activity behaviour types and context across 81% of accelerometer-identified episodes of activity. Wearable cameras represent the best objective method currently available to categorise the social and environmental context of accelerometer-defined episodes of activity in free-living conditions.
spellingShingle Doherty, A
Kelly, P
Kerr, J
Marshall, S
Oliver, M
Badland, H
Hamilton, A
Foster, C
Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title_full Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title_fullStr Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title_full_unstemmed Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title_short Using wearable cameras to categorise type and context of accelerometer-identified episodes of physical activity.
title_sort using wearable cameras to categorise type and context of accelerometer identified episodes of physical activity
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