Using infrastructure-provided context filters for efficient fine-grained activity sensing

While mobile and wearable sensing can capture unique insights into fine-grained activities (such as gestures and limb-based actions) at an individual level, their energy overheads are still prohibitive enough to prevent them from being executed continuously. In this paper, we explore practical alter...

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Main Authors: SUBBARAJU, Vigneshwaran, SEN, Sougata, MISRA, Archan, CHAKRABORTY, Satyadip, BALAN, Rajesh Krishna
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Language:English
Published: Institutional Knowledge at Singapore Management University 2015
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Online Access:https://ink.library.smu.edu.sg/sis_research/2678
https://ink.library.smu.edu.sg/context/sis_research/article/3678/viewcontent/Infrastructure_ProvidedContextFilters_2015.pdf
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spelling sg-smu-ink.sis_research-36782020-04-01T06:26:49Z Using infrastructure-provided context filters for efficient fine-grained activity sensing SUBBARAJU, Vigneshwaran SEN, Sougata MISRA, Archan CHAKRABORTY, Satyadip BALAN, Rajesh Krishna While mobile and wearable sensing can capture unique insights into fine-grained activities (such as gestures and limb-based actions) at an individual level, their energy overheads are still prohibitive enough to prevent them from being executed continuously. In this paper, we explore practical alternatives to addressing this challenge-by exploring how cheap infrastructure sensors or information sources (e.g., BLE beacons) can be harnessed with such mobile/wearable sensors to provide an effective solution that reduces energy consumption without sacrificing accuracy. The key idea is that many fine-grained activities that we desire to capture are specific to certain location, movement or background context: infrastructure sensors and information sources (e.g., BLE beacons) offer practical and cheap ways to identify such context. In this paper, we first explore how various infrastructure, mobile & wearable sensors can be used to identify fine-grained location/movement context (e.g., transiting through a door). We then show, using a couple of illustrative examples (specifically, the detection of `switch pressing' before exiting a room and the identification of `water drinking' after approaching a water cooler) to show that such background context can be predicted, with sufficient accuracy, with sufficient lead time to enable a `triggered' model for mobile/wearable sensing of such microscopic, transient gestures and activities. Moreover, such `triggered' sensing also helps to improve the accuracy of such microscopic gesture recognition, by reducing the set of candidate activity labels. Empirical experiments show that we are able to identify 82.2% of switch-pressing and 91.73% of water-drinking activities in a campus lab setting, with a significant reduction in active sensing time (up to 92.9% compared to continuous sensing). 2015-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/2678 info:doi/10.1109/PERCOM.2015.7146513 https://ink.library.smu.edu.sg/context/sis_research/article/3678/viewcontent/Infrastructure_ProvidedContextFilters_2015.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Energy utilization Gesture recognition Potable water Ubiquitous computing Wearable technology Artificial Intelligence and Robotics Software Engineering
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Energy utilization
Gesture recognition
Potable water
Ubiquitous computing
Wearable technology
Artificial Intelligence and Robotics
Software Engineering
spellingShingle Energy utilization
Gesture recognition
Potable water
Ubiquitous computing
Wearable technology
Artificial Intelligence and Robotics
Software Engineering
SUBBARAJU, Vigneshwaran
SEN, Sougata
MISRA, Archan
CHAKRABORTY, Satyadip
BALAN, Rajesh Krishna
Using infrastructure-provided context filters for efficient fine-grained activity sensing
description While mobile and wearable sensing can capture unique insights into fine-grained activities (such as gestures and limb-based actions) at an individual level, their energy overheads are still prohibitive enough to prevent them from being executed continuously. In this paper, we explore practical alternatives to addressing this challenge-by exploring how cheap infrastructure sensors or information sources (e.g., BLE beacons) can be harnessed with such mobile/wearable sensors to provide an effective solution that reduces energy consumption without sacrificing accuracy. The key idea is that many fine-grained activities that we desire to capture are specific to certain location, movement or background context: infrastructure sensors and information sources (e.g., BLE beacons) offer practical and cheap ways to identify such context. In this paper, we first explore how various infrastructure, mobile & wearable sensors can be used to identify fine-grained location/movement context (e.g., transiting through a door). We then show, using a couple of illustrative examples (specifically, the detection of `switch pressing' before exiting a room and the identification of `water drinking' after approaching a water cooler) to show that such background context can be predicted, with sufficient accuracy, with sufficient lead time to enable a `triggered' model for mobile/wearable sensing of such microscopic, transient gestures and activities. Moreover, such `triggered' sensing also helps to improve the accuracy of such microscopic gesture recognition, by reducing the set of candidate activity labels. Empirical experiments show that we are able to identify 82.2% of switch-pressing and 91.73% of water-drinking activities in a campus lab setting, with a significant reduction in active sensing time (up to 92.9% compared to continuous sensing).
format text
author SUBBARAJU, Vigneshwaran
SEN, Sougata
MISRA, Archan
CHAKRABORTY, Satyadip
BALAN, Rajesh Krishna
author_facet SUBBARAJU, Vigneshwaran
SEN, Sougata
MISRA, Archan
CHAKRABORTY, Satyadip
BALAN, Rajesh Krishna
author_sort SUBBARAJU, Vigneshwaran
title Using infrastructure-provided context filters for efficient fine-grained activity sensing
title_short Using infrastructure-provided context filters for efficient fine-grained activity sensing
title_full Using infrastructure-provided context filters for efficient fine-grained activity sensing
title_fullStr Using infrastructure-provided context filters for efficient fine-grained activity sensing
title_full_unstemmed Using infrastructure-provided context filters for efficient fine-grained activity sensing
title_sort using infrastructure-provided context filters for efficient fine-grained activity sensing
publisher Institutional Knowledge at Singapore Management University
publishDate 2015
url https://ink.library.smu.edu.sg/sis_research/2678
https://ink.library.smu.edu.sg/context/sis_research/article/3678/viewcontent/Infrastructure_ProvidedContextFilters_2015.pdf
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