Workers’ context description and unsafe behavior recognition in Internet of things for mines

The mine is a complicated environment.The intelligent recognition of such behavior requires not only the data-driven activity recognition method,but also the machine-readable domain knowledge based approach.However,the data of IoT for mines lacks the semantic information.Besides,there is no standard...

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Main Authors: Shimin FENG, Zhongyu LIU, Xiao YU, Lei MENG, Zhikai ZHAO, Enjie DING
Format: Article
Language:zho
Published: China InfoCom Media Group 2018-12-01
Series:物联网学报
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Online Access:http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2018.00083/
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author Shimin FENG
Zhongyu LIU
Xiao YU
Lei MENG
Zhikai ZHAO
Enjie DING
author_facet Shimin FENG
Zhongyu LIU
Xiao YU
Lei MENG
Zhikai ZHAO
Enjie DING
author_sort Shimin FENG
collection DOAJ
description The mine is a complicated environment.The intelligent recognition of such behavior requires not only the data-driven activity recognition method,but also the machine-readable domain knowledge based approach.However,the data of IoT for mines lacks the semantic information.Besides,there is no standard way of describing the worker’s context and representing the knowledge of worker’s unsafe behavior.In order to solve the above problems,a semantic ontology based approach to describing the worker’s context and a hybrid method based framework for worker’s unsafe behavior recognition were presented.This method combines the data-driven approach and the knowledge-driven approach.Firstly,an introduction to the semantic ontology in the Internet of things was given.Then,the importance and necessity of worker’s unsafe behavior recognition was introduced.After that,the research background on human activity recognition,context-awareness and semantic ontology was presented.This was followed by the semantic ontology based approach to the worker’s context description.Based on the context modeling,the framework that combined the data-driven method and the knowledge-driven method for the worker’s unsafe behavior recognition was proposed.The application of the framework was illustrated with the recognition of a kind of worker’s unsafe behavior who don’t wear the protective and safety equipment.Finally,the conclusions were drawn and the prospect of using the artificial intelligence method in the application layer of mine IoT was presented.
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institution Kabale University
issn 2096-3750
language zho
publishDate 2018-12-01
publisher China InfoCom Media Group
record_format Article
series 物联网学报
spelling doaj-art-5cc755d99fce4e7ebadf7a030577f7bf2025-01-15T02:52:17ZzhoChina InfoCom Media Group物联网学报2096-37502018-12-012939859643986Workers’ context description and unsafe behavior recognition in Internet of things for minesShimin FENGZhongyu LIUXiao YULei MENGZhikai ZHAOEnjie DINGThe mine is a complicated environment.The intelligent recognition of such behavior requires not only the data-driven activity recognition method,but also the machine-readable domain knowledge based approach.However,the data of IoT for mines lacks the semantic information.Besides,there is no standard way of describing the worker’s context and representing the knowledge of worker’s unsafe behavior.In order to solve the above problems,a semantic ontology based approach to describing the worker’s context and a hybrid method based framework for worker’s unsafe behavior recognition were presented.This method combines the data-driven approach and the knowledge-driven approach.Firstly,an introduction to the semantic ontology in the Internet of things was given.Then,the importance and necessity of worker’s unsafe behavior recognition was introduced.After that,the research background on human activity recognition,context-awareness and semantic ontology was presented.This was followed by the semantic ontology based approach to the worker’s context description.Based on the context modeling,the framework that combined the data-driven method and the knowledge-driven method for the worker’s unsafe behavior recognition was proposed.The application of the framework was illustrated with the recognition of a kind of worker’s unsafe behavior who don’t wear the protective and safety equipment.Finally,the conclusions were drawn and the prospect of using the artificial intelligence method in the application layer of mine IoT was presented.http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2018.00083/mine Internet of thingsunsafe behavioractivity recognitionontologyartificial intelligence
spellingShingle Shimin FENG
Zhongyu LIU
Xiao YU
Lei MENG
Zhikai ZHAO
Enjie DING
Workers’ context description and unsafe behavior recognition in Internet of things for mines
物联网学报
mine Internet of things
unsafe behavior
activity recognition
ontology
artificial intelligence
title Workers’ context description and unsafe behavior recognition in Internet of things for mines
title_full Workers’ context description and unsafe behavior recognition in Internet of things for mines
title_fullStr Workers’ context description and unsafe behavior recognition in Internet of things for mines
title_full_unstemmed Workers’ context description and unsafe behavior recognition in Internet of things for mines
title_short Workers’ context description and unsafe behavior recognition in Internet of things for mines
title_sort workers context description and unsafe behavior recognition in internet of things for mines
topic mine Internet of things
unsafe behavior
activity recognition
ontology
artificial intelligence
url http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2018.00083/
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AT xiaoyu workerscontextdescriptionandunsafebehaviorrecognitionininternetofthingsformines
AT leimeng workerscontextdescriptionandunsafebehaviorrecognitionininternetofthingsformines
AT zhikaizhao workerscontextdescriptionandunsafebehaviorrecognitionininternetofthingsformines
AT enjieding workerscontextdescriptionandunsafebehaviorrecognitionininternetofthingsformines