Understanding Worker Mobility within the Stay Locations using HMMs on Semantic Trajectories

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Názov: Understanding Worker Mobility within the Stay Locations using HMMs on Semantic Trajectories
Autori: Arslan, Muhammad, Cruz, Christophe, Ginhac, Dominique
Prispievatelia: Arslan, Muhammad
Zdroj: 2018 14th International Conference on Emerging Technologies (ICET). :1-6
Informácie o vydavateľovi: IEEE, 2018.
Rok vydania: 2018
Predmety: worker safety, GPS, visual databases, Trajectory, mobility related worker behavior, temporal databases, 02 engineering and technology, hazardous industry, indoor positioning system, site safety, Global Positioning System, 0202 electrical engineering, electronic engineering, information engineering, Hidden Markov models, Buildings, Viterbi algorithm, technological developments, Taxonomy, construction industry, Data models, [SCCO] Cognitive science, stay locations, mobility, Semantics, safety management strategies, semantic trajectories, worker mobility, indoor building environment, spatio-temporal data, occupational health, personnel, Safety
Popis: Construction is one of the most hazardous industries because it involves dynamic interactions between workers and machinery on sites. The recent technological developments in indoor positioning technologies provide a huge volume of spatio-temporal data for studying dynamic interactions of moving objects. The results from such studies can be used for enhancing safety management strategies on sites by recognizing the mobility related workers` behaviors. For understanding workers` mobility behaviors to improve site safety, a system is proposed based on semantic trajectories and the Hidden Markov Models (HMMs). Firstly, the system captures raw spatio-temporal trajectories of workers using an Indoor Positioning System (IPS) and preprocess them for determining the important stay locations where the workers are spending the majority of their time. Then, these processed trajectories are transformed into semantic trajectories to establish an understanding of the meanings behind workers` mobility behaviors in terms of the building environment. Lastly, HMMs along with the Viterbi algorithm are used for categorizing different workers` mobility behaviors within the identified stay locations. The proposed system is tested using an indoor building environment and the results show that it holds a potential to identify high-risk workers` behaviors to improve site safety.
Druh dokumentu: Article
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Other literature type
DOI: 10.1109/icet.2018.8603666
Prístupová URL adresa: http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=8603666
http://xplorestaging.ieee.org/ielx7/8596318/8603548/08603666.pdf?arnumber=8603666
Prístupové číslo: edsair.doi.dedup.....ea108c20d3e5d8d8a70a9ea6d0976b39
Databáza: OpenAIRE
Popis
Abstrakt:Construction is one of the most hazardous industries because it involves dynamic interactions between workers and machinery on sites. The recent technological developments in indoor positioning technologies provide a huge volume of spatio-temporal data for studying dynamic interactions of moving objects. The results from such studies can be used for enhancing safety management strategies on sites by recognizing the mobility related workers` behaviors. For understanding workers` mobility behaviors to improve site safety, a system is proposed based on semantic trajectories and the Hidden Markov Models (HMMs). Firstly, the system captures raw spatio-temporal trajectories of workers using an Indoor Positioning System (IPS) and preprocess them for determining the important stay locations where the workers are spending the majority of their time. Then, these processed trajectories are transformed into semantic trajectories to establish an understanding of the meanings behind workers` mobility behaviors in terms of the building environment. Lastly, HMMs along with the Viterbi algorithm are used for categorizing different workers` mobility behaviors within the identified stay locations. The proposed system is tested using an indoor building environment and the results show that it holds a potential to identify high-risk workers` behaviors to improve site safety.
DOI:10.1109/icet.2018.8603666