Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction

Construction industry has reported among the highest accident and fatality rates over the past decade. In particular, crane lifting is a notably hazardous operation on construction sites, causing fatal accidents like workers being struck by the boom or objects fallen from tower cranes. Manual monito...

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Váldodahkkit: Lam, Chin Pok, Lee, Yin Ni, Ting, Chung Lam, Wong, Peter Kok-Yiu, Cheng, Jack C. P., Leung, Pak Him
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Almmustuhtton: Firenze University Press 2024
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author Lam, Chin Pok
Lee, Yin Ni
Ting, Chung Lam
Wong, Peter Kok-Yiu
Cheng, Jack C. P.
Leung, Pak Him
author_browse Cheng, Jack C. P.
Lam, Chin Pok
Lee, Yin Ni
Leung, Pak Him
Ting, Chung Lam
Wong, Peter Kok-Yiu
author_facet Lam, Chin Pok
Lee, Yin Ni
Ting, Chung Lam
Wong, Peter Kok-Yiu
Cheng, Jack C. P.
Leung, Pak Him
author_sort Lam, Chin Pok
collection Directory of Open Access Books
description Construction industry has reported among the highest accident and fatality rates over the past decade. In particular, crane lifting is a notably hazardous operation on construction sites, causing fatal accidents like workers being struck by the boom or objects fallen from tower cranes. Manual monitoring by on-site safety officers is labour-intensive and error-prone, while incorporating computer vision techniques into surveillance cameras would enable more automatic and continuous monitoring of construction site operations. However, existing studies for lifting safety mainly detect the presence of individual objects (e.g. workers, crane components), while a methodology is needed to predict their potential collision more proactively before accidents happen. This paper develops a vision-based framework for predictive lifting safety monitoring, including three modules: (1) object detection and classification: targeting at hook and lifting materials to enable danger zone estimation, along with workers and their personal protective equipment; (2) worker movement tracking and prediction: analyzing the historical moving trajectory of each unique worker to foresee his/her future movement in certain period ahead; (3) multi-level safety assessment: issuing predictive warning in real-time upon any crane-worker conflict foreseen. The proposed framework is applicable to real-time site video processing and enables end-to-end lifting safety monitoring with instant alerting upon unsafe scenarios observed. Importantly, the proposed framework predicts the future movement of workers to proactively identify potential site hazard, in order to trigger earlier safety alert for more timely decision-making. With a large video dataset capturing tower crane operations, the proposed framework demonstrates competitive accuracy and computational efficiency in crane-worker conflict prediction, validating its practicality for real-time lifting safety monitoring
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spelling doab-20.500.12854ir-1372952024-05-13T11:54:42Z Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction Lam, Chin Pok Lee, Yin Ni Ting, Chung Lam Wong, Peter Kok-Yiu Cheng, Jack C. P. Leung, Pak Him Computer Vision Construction Safety Monitoring Crane-Worker Conflict Prediction Deep Learning Predictive Safety Assessment Trajectory Tracking thema EDItEUR::U Computing and Information Technology::UT Computer networking and communications::UTV Virtualization Construction industry has reported among the highest accident and fatality rates over the past decade. In particular, crane lifting is a notably hazardous operation on construction sites, causing fatal accidents like workers being struck by the boom or objects fallen from tower cranes. Manual monitoring by on-site safety officers is labour-intensive and error-prone, while incorporating computer vision techniques into surveillance cameras would enable more automatic and continuous monitoring of construction site operations. However, existing studies for lifting safety mainly detect the presence of individual objects (e.g. workers, crane components), while a methodology is needed to predict their potential collision more proactively before accidents happen. This paper develops a vision-based framework for predictive lifting safety monitoring, including three modules: (1) object detection and classification: targeting at hook and lifting materials to enable danger zone estimation, along with workers and their personal protective equipment; (2) worker movement tracking and prediction: analyzing the historical moving trajectory of each unique worker to foresee his/her future movement in certain period ahead; (3) multi-level safety assessment: issuing predictive warning in real-time upon any crane-worker conflict foreseen. The proposed framework is applicable to real-time site video processing and enables end-to-end lifting safety monitoring with instant alerting upon unsafe scenarios observed. Importantly, the proposed framework predicts the future movement of workers to proactively identify potential site hazard, in order to trigger earlier safety alert for more timely decision-making. With a large video dataset capturing tower crane operations, the proposed framework demonstrates competitive accuracy and computational efficiency in crane-worker conflict prediction, validating its practicality for real-time lifting safety monitoring 2024-05-13T11:54:36Z 2024-05-13T11:54:36Z 2024-04-02T15:45:31Z 2023 chapter ONIX_20240402_9791221502893_37 2704-5846 https://library.oapen.org/handle/20.500.12657/89068 9791221502893 https://directory.doabooks.org/handle/20.500.12854/137295 eng Proceedings e report open access image/jpeg n/a https://library.oapen.org/bitstream/20.500.12657/89068/1/9791221502893_64.pdf Firenze University Press 10.36253/979-12-215-0289-3.64 10.36253/979-12-215-0289-3.64 2ec4474d-93b1-4cfa-b313-9c6019b51b1a 9791221502893 9 Florence open access
spellingShingle Computer Vision
Construction Safety Monitoring
Crane-Worker Conflict Prediction
Deep Learning
Predictive Safety Assessment
Trajectory Tracking
thema EDItEUR::U Computing and Information Technology::UT Computer networking and communications::UTV Virtualization
Lam, Chin Pok
Lee, Yin Ni
Ting, Chung Lam
Wong, Peter Kok-Yiu
Cheng, Jack C. P.
Leung, Pak Him
Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title_full Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title_fullStr Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title_full_unstemmed Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title_short Chapter Predictive Safety Monitoring for Lifting Operations with Vision-Based Crane-Worker Conflict Prediction
title_sort chapter predictive safety monitoring for lifting operations with vision based crane worker conflict prediction
topic Computer Vision
Construction Safety Monitoring
Crane-Worker Conflict Prediction
Deep Learning
Predictive Safety Assessment
Trajectory Tracking
thema EDItEUR::U Computing and Information Technology::UT Computer networking and communications::UTV Virtualization
topic_facet Computer Vision
Construction Safety Monitoring
Crane-Worker Conflict Prediction
Deep Learning
Predictive Safety Assessment
Trajectory Tracking
thema EDItEUR::U Computing and Information Technology::UT Computer networking and communications::UTV Virtualization
url ONIX_20240402_9791221502893_37
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