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Applications of object detection in modular construction based on a comparative evaluation of deep learning algorithms

Chang Liu (Faculty of Engineering, University of New South Wales, Sydney, Australia)
Samad M.E. Sepasgozar (Faculty of Arts, Design and Architecture, University of New South Wales, Sydney, Australia)
Sara Shirowzhan (Faculty of Arts, Design and Architecture, University of New South Wales, Sydney, Australia)
Gelareh Mohammadi (Faculty of Engineering, University of New South Wales, Sydney, Australia)

Construction Innovation

ISSN: 1471-4175

Article publication date: 21 May 2021

Issue publication date: 3 January 2022

1002

Abstract

Purpose

The practice of artificial intelligence (AI) is increasingly being promoted by technology developers. However, its adoption rate is still reported as low in the construction industry due to a lack of expertise and the limited reliable applications for AI technology. Hence, this paper aims to present the detailed outcome of experimentations evaluating the applicability and the performance of AI object detection algorithms for construction modular object detection.

Design/methodology/approach

This paper provides a thorough evaluation of two deep learning algorithms for object detection, including the faster region-based convolutional neural network (faster RCNN) and single shot multi-box detector (SSD). Two types of metrics are also presented; first, the average recall and mean average precision by image pixels; second, the recall and precision by counting. To conduct the experiments using the selected algorithms, four infrastructure and building construction sites are chosen to collect the required data, including a total of 990 images of three different but common modular objects, including modular panels, safety barricades and site fences.

Findings

The results of the comprehensive evaluation of the algorithms show that the performance of faster RCNN and SSD depends on the context that detection occurs. Indeed, surrounding objects and the backgrounds of the objects affect the level of accuracy obtained from the AI analysis and may particularly effect precision and recall. The analysis of loss lines shows that the loss lines for selected objects depend on both their geometry and the image background. The results on selected objects show that faster RCNN offers higher accuracy than SSD for detection of selected objects.

Research limitations/implications

The results show that modular object detection is crucial in construction for the achievement of the required information for project quality and safety objectives. The detection process can significantly improve monitoring object installation progress in an accurate and machine-based manner avoiding human errors. The results of this paper are limited to three construction sites, but future investigations can cover more tasks or objects from different construction sites in a fully automated manner.

Originality/value

This paper’s originality lies in offering new AI applications in modular construction, using a large first-hand data set collected from three construction sites. Furthermore, the paper presents the scientific evaluation results of implementing recent object detection algorithms across a set of extended metrics using the original training and validation data sets to improve the generalisability of the experimentation. This paper also provides the practitioners and scholars with a workflow on AI applications in the modular context and the first-hand referencing data.

Keywords

Citation

Liu, C., M.E. Sepasgozar, S., Shirowzhan, S. and Mohammadi, G. (2021), "Applications of object detection in modular construction based on a comparative evaluation of deep learning algorithms", Construction Innovation, Vol. 22 No. 1, pp. 141-159. https://doi.org/10.1108/CI-02-2020-0017

Publisher

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Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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