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Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches

As the availability and use of wearables increases, they are becoming a promising platform for context sensing and context analysis. Smartwatches are a particularly interesting platform for this purpose, as they offer salient advantages, such as their proximity to the human body. However, they also...

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Autores principales: Rawassizadeh, Reza, Tomitsch, Martin, Nourizadeh, Manouchehr, Momeni, Elaheh, Peery, Aaron, Ulanova, Liudmila, Pazzani, Michael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4610428/
https://www.ncbi.nlm.nih.gov/pubmed/26370997
http://dx.doi.org/10.3390/s150922616
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author Rawassizadeh, Reza
Tomitsch, Martin
Nourizadeh, Manouchehr
Momeni, Elaheh
Peery, Aaron
Ulanova, Liudmila
Pazzani, Michael
author_facet Rawassizadeh, Reza
Tomitsch, Martin
Nourizadeh, Manouchehr
Momeni, Elaheh
Peery, Aaron
Ulanova, Liudmila
Pazzani, Michael
author_sort Rawassizadeh, Reza
collection PubMed
description As the availability and use of wearables increases, they are becoming a promising platform for context sensing and context analysis. Smartwatches are a particularly interesting platform for this purpose, as they offer salient advantages, such as their proximity to the human body. However, they also have limitations associated with their small form factor, such as processing power and battery life, which makes it difficult to simply transfer smartphone-based context sensing and prediction models to smartwatches. In this paper, we introduce an energy-efficient, generic, integrated framework for continuous context sensing and prediction on smartwatches. Our work extends previous approaches for context sensing and prediction on wrist-mounted wearables that perform predictive analytics outside the device. We offer a generic sensing module and a novel energy-efficient, on-device prediction module that is based on a semantic abstraction approach to convert sensor data into meaningful information objects, similar to human perception of a behavior. Through six evaluations, we analyze the energy efficiency of our framework modules, identify the optimal file structure for data access and demonstrate an increase in accuracy of prediction through our semantic abstraction method. The proposed framework is hardware independent and can serve as a reference model for implementing context sensing and prediction on small wearable devices beyond smartwatches, such as body-mounted cameras.
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spelling pubmed-46104282015-10-26 Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches Rawassizadeh, Reza Tomitsch, Martin Nourizadeh, Manouchehr Momeni, Elaheh Peery, Aaron Ulanova, Liudmila Pazzani, Michael Sensors (Basel) Article As the availability and use of wearables increases, they are becoming a promising platform for context sensing and context analysis. Smartwatches are a particularly interesting platform for this purpose, as they offer salient advantages, such as their proximity to the human body. However, they also have limitations associated with their small form factor, such as processing power and battery life, which makes it difficult to simply transfer smartphone-based context sensing and prediction models to smartwatches. In this paper, we introduce an energy-efficient, generic, integrated framework for continuous context sensing and prediction on smartwatches. Our work extends previous approaches for context sensing and prediction on wrist-mounted wearables that perform predictive analytics outside the device. We offer a generic sensing module and a novel energy-efficient, on-device prediction module that is based on a semantic abstraction approach to convert sensor data into meaningful information objects, similar to human perception of a behavior. Through six evaluations, we analyze the energy efficiency of our framework modules, identify the optimal file structure for data access and demonstrate an increase in accuracy of prediction through our semantic abstraction method. The proposed framework is hardware independent and can serve as a reference model for implementing context sensing and prediction on small wearable devices beyond smartwatches, such as body-mounted cameras. MDPI 2015-09-08 /pmc/articles/PMC4610428/ /pubmed/26370997 http://dx.doi.org/10.3390/s150922616 Text en © 2015 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Rawassizadeh, Reza
Tomitsch, Martin
Nourizadeh, Manouchehr
Momeni, Elaheh
Peery, Aaron
Ulanova, Liudmila
Pazzani, Michael
Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title_full Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title_fullStr Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title_full_unstemmed Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title_short Energy-Efficient Integration of Continuous Context Sensing and Prediction into Smartwatches
title_sort energy-efficient integration of continuous context sensing and prediction into smartwatches
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4610428/
https://www.ncbi.nlm.nih.gov/pubmed/26370997
http://dx.doi.org/10.3390/s150922616
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