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contributor authorDai Quoc Tran
contributor authorYuntae Jeon
contributor authorArmstrong Aboah
contributor authorJinyeong Bak
contributor authorMinsoo Park
contributor authorSeunghee Park
date accessioned2025-04-20T10:30:45Z
date available2025-04-20T10:30:45Z
date copyright11/6/2024 12:00:00 AM
date issued2025
identifier otherJCEMD4.COENG-15259.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4304865
description abstractThe advancement of deep learning has led to a growing demand and increase in research on computer vision–based construction site monitoring for improved safety and operational efficiency. These methods largely depend on supervised learning, requiring labeled data for optimal performance. However, when applied to new construction sites with varied environmental conditions, the effectiveness of these models is often compromised. Additionally, highly imbalanced object class distributions in the data sets, known as long-tailed objects, presents significant challenges during model training, considerably impacting performance. Recognizing this crucial gap in the field, this study proposes a novel approach to improve safety and operational efficiency at construction sites by leveraging a semisupervised learning approach for domain adaptation in long-tailed object detection. The method addresses the challenges of unbalanced class distribution and environmental variability in construction site monitoring, which often degrade the performance of computer vision models. By employing semisupervised learning, both labeled and unlabeled data are utilized in domain adaptation to unseen construction sites, considering both image-and object-level noise, thereby enhancing the model’s adaptability to diverse working conditions. Based on the detection results, a risk scenario detection algorithm is also introduced for construction vehicles and workers. The efficacy of the proposed approach was validated through extensive experiments conducted on a comprehensive data set sourced from AIHub and CrowdHuman, in addition to actual self-labeled closed-circuit television (CCTV) data comprising 500 videos from construction sites’ CCTV cameras. The evaluations revealed that the proposed method significantly outperforms conventional semisupervised learning by 9.76% on mean average precision for construction vehicle detection and by 3% for the worker detection model, paving the way for advanced construction site monitoring systems that ensure a safer and more efficient working environment.
publisherAmerican Society of Civil Engineers
titleLeveraging Semisupervised Learning for Domain Adaptation: Enhancing Safety at Construction Sites through Long-Tailed Object Detection
typeJournal Article
journal volume151
journal issue1
journal titleJournal of Construction Engineering and Management
identifier doi10.1061/JCEMD4.COENG-15259
journal fristpage04024190-1
journal lastpage04024190-20
page20
treeJournal of Construction Engineering and Management:;2025:;Volume ( 151 ):;issue: 001
contenttypeFulltext


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