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iLog: An Intelligent Device for Automatic Food Intake Monitoring and Stress Detection in the IoMT
Not knowing when to stop eating or how much food is too much can lead to many health issues. In iLog, we propose a system which can not only monitor but also create awareness for the user of how much food is too much. iLog provides information on the emotional state of a person along with the classi...
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Published in: | IEEE transactions on consumer electronics 2020-05, Vol.66 (2), p.115-124 |
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container_title | IEEE transactions on consumer electronics |
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creator | Rachakonda, Laavanya Mohanty, Saraju P. Kougianos, Elias |
description | Not knowing when to stop eating or how much food is too much can lead to many health issues. In iLog, we propose a system which can not only monitor but also create awareness for the user of how much food is too much. iLog provides information on the emotional state of a person along with the classification of eating behaviors to Normal-Eating or Stress-Eating. Chronic stress, uncontrolled or unmonitored food consumption, and obesity are intricately connected, even involving certain neurological adaptations. We propose a deep learning model for edge computing platforms which can automatically detect, classify and quantify the objects from the plate of the user. Three different paradigms where the idea of iLog can be performed are explored in this research. Two different edge platforms have been implemented in iLog. The platforms include mobile, as it is widely used, and a single board computer which can easily be a part of network for executing experiments with iLog-Glasses being the main wearable. The iLog model has produced an overall accuracy of 98% with an average precision of 85.8%. |
doi_str_mv | 10.1109/TCE.2020.2976006 |
format | article |
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In iLog, we propose a system which can not only monitor but also create awareness for the user of how much food is too much. iLog provides information on the emotional state of a person along with the classification of eating behaviors to Normal-Eating or Stress-Eating. Chronic stress, uncontrolled or unmonitored food consumption, and obesity are intricately connected, even involving certain neurological adaptations. We propose a deep learning model for edge computing platforms which can automatically detect, classify and quantify the objects from the plate of the user. Three different paradigms where the idea of iLog can be performed are explored in this research. Two different edge platforms have been implemented in iLog. The platforms include mobile, as it is widely used, and a single board computer which can easily be a part of network for executing experiments with iLog-Glasses being the main wearable. The iLog model has produced an overall accuracy of 98% with an average precision of 85.8%.</description><subject>Cameras</subject><subject>Cloud computing</subject><subject>Eating</subject><subject>Edge computing</subject><subject>Food</subject><subject>Food intake</subject><subject>food intake monitoring</subject><subject>Image edge detection</subject><subject>Internet of Medical Things (IoMT)</subject><subject>Machine learning</subject><subject>Manuals</subject><subject>Model accuracy</subject><subject>Monitoring</subject><subject>Object recognition</subject><subject>Platforms</subject><subject>smart healthcare</subject><subject>Smart home</subject><subject>smart living</subject><subject>Stress</subject><subject>stress-eating</subject><subject>stress-level analysis</subject><issn>0098-3063</issn><issn>1558-4127</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2020</creationdate><recordtype>article</recordtype><recordid>eNo9kEFPAjEQRhujiYjeTbw08bw4bdnd1htBUBKIB_HclO4sFqHVtpj4710CMXOYy_e-mTxCbhkMGAP1sBxPBhw4DLiqK4DqjPRYWcpiyHh9TnoAShYCKnFJrlLaALBhyWWPGDcP60c68nTmM263bo0-0yf8cRZpGyId7XPYmewsnYbQHFLmE-kieJdDdH5NjW_oW46YUodltNkFT52n-QPpLCyW1-SiNduEN6fdJ-_TyXL8Usxfn2fj0bywXLFcSCZtCUJZZowCJhSvuSxZY7iwlW2gNbXiqkSpVG1ZtUJrm1UlsEHVohRD0Sf3x96vGL73mLLehH303UnNhRK1FIfpEzimbAwpRWz1V3Q7E381A30QqTuR-iBSn0R2yN0RcYj4H-9-ZKVS4g81p23O</recordid><startdate>20200501</startdate><enddate>20200501</enddate><creator>Rachakonda, Laavanya</creator><creator>Mohanty, Saraju P.</creator><creator>Kougianos, Elias</creator><general>IEEE</general><general>The Institute of Electrical and Electronics Engineers, Inc. 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subjects | Cameras Cloud computing Eating Edge computing Food Food intake food intake monitoring Image edge detection Internet of Medical Things (IoMT) Machine learning Manuals Model accuracy Monitoring Object recognition Platforms smart healthcare Smart home smart living Stress stress-eating stress-level analysis |
title | iLog: An Intelligent Device for Automatic Food Intake Monitoring and Stress Detection in the IoMT |
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