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Fall-portent detection for construction sites based on computer vision and machine learning

Xiaoyu Liu (School of Naval Architecture, Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai, China)
Feng Xu (School of Naval Architecture, Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai, China)
Zhipeng Zhang (School of Naval Architecture, Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai, China)
Kaiyu Sun (Shanghai Jianke Engineering Consulting Co., Ltd, Shanghai, China)

Engineering, Construction and Architectural Management

ISSN: 0969-9988

Article publication date: 12 October 2023

182

Abstract

Purpose

Fall accidents can cause casualties and economic losses in the construction industry. Fall portents, such as loss of balance (LOB) and sudden sways, can result in fatal, nonfatal or attempted fall accidents. All of them are worthy of studying to take measures to prevent future accidents. Detecting fall portents can proactively and comprehensively help managers assess the risk to workers as well as in the construction environment and further prevent fall accidents.

Design/methodology/approach

This study focused on the postures of workers and aimed to directly detect fall portents using a computer vision (CV)-based noncontact approach. Firstly, a joint coordinate matrix generated from a three-dimensional pose estimation model is employed, and then the matrix is preprocessed by principal component analysis, K-means and pre-experiments. Finally, a modified fusion K-nearest neighbor-based machine learning model is built to fuse information from the x, y and z axes and output the worker's pose status into three stages.

Findings

The proposed model can output the worker's pose status into three stages (steady–unsteady–fallen) and provide corresponding confidence probabilities for each category. Experiments conducted to evaluate the approach show that the model accuracy reaches 85.02% with threshold-based postprocessing. The proposed fall-portent detection approach can extract the fall risk of workers in the both pre- and post-event phases based on noncontact approach.

Research limitations/implications

First, three-dimensional (3D) pose estimation needs sufficient information, which means it may not perform well when applied in complicated environments or when the shooting distance is extremely large. Second, solely focusing on fall-related factors may not be comprehensive enough. Future studies can incorporate the results of this research as an indicator into the risk assessment system to achieve a more comprehensive and accurate evaluation of worker and site risk.

Practical implications

The proposed machine learning model determines whether the worker is in a status of steady, unsteady or fallen using a CV-based approach. From the perspective of construction management, when detecting fall-related actions on construction sites, the noncontact approach based on CV has irreplaceable advantages of no interruption to workers and low cost. It can make use of the surveillance cameras on construction sites to recognize both preceding events and happened accidents. The detection of fall portents can help worker risk assessment and safety management.

Originality/value

Existing studies using sensor-based approaches are high-cost and invasive for construction workers, and others using CV-based approaches either oversimplify by binary classification of the non-entire fall process or indirectly achieve fall-portent detection. Instead, this study aims to detect fall portents directly by worker's posture and divide the entire fall process into three stages using a CV-based noncontact approach. It can help managers carry out more comprehensive risk assessment and develop preventive measures.

Keywords

Acknowledgements

This research was supported by the Science Research Plan of Shanghai Municipal Science and Technology Committee [Grant No. 20dz1201301], and the 2021 Science Research Plan of Shanghai Housing and Urban-Rural Development Management Committee [Grant No. 2021-002-4049].

Citation

Liu, X., Xu, F., Zhang, Z. and Sun, K. (2023), "Fall-portent detection for construction sites based on computer vision and machine learning", Engineering, Construction and Architectural Management, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/ECAM-05-2023-0458

Publisher

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Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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