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contributor authorShaohua Jiang
contributor authorShengyu Wang
contributor authorHongwei Sun
contributor authorWei Liu
contributor authorBai Xiao
contributor authorHee-Sung Cha
contributor authorJingqi Zhang
date accessioned2025-08-17T22:41:48Z
date available2025-08-17T22:41:48Z
date copyright8/1/2025 12:00:00 AM
date issued2025
identifier otherJCEMD4.COENG-16677.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4307312
description abstractDefects in reinforced concrete structures can pose significant threats to the long-term quality and safety of buildings, making it crucial to ensure timely and accurate detection and assessment of these defects. This study proposes an improved version of the YOLOv8 model—RC-YOLOv8—to address the limitations of existing deep learning models in identifying defects in complex environments, as well as deployment challenges on resource-constrained devices. This lightweight object detection network is specifically designed for detecting concrete cracks and exposed rebar defects with high precision under low computational loads, even in complex backgrounds. RC-YOLOv8 integrates Adaptive Convolution (AKConv), Dual Convolution (DualConv), and the Convolutional Block Attention Module (CBAM), which together enhance feature extraction and fusion, significantly improving detection accuracy and robustness in complex construction environments. To further enhance postdetection defect management, this study also introduces a multilevel risk warning mechanism integrated with RC-YOLOv8, which provides risk scoring and graded warnings based on defect severity, supporting management personnel in quickly responding and taking appropriate maintenance actions. The experimental results show that, compared to YOLOv8n, RC-YOLOv8 reduces the number of parameters by approximately 438,000 and increases detection precision by 9.2 percentage points, recall rate by 2.6 percentage points, and mAP@0.5 and mAP@0.5:0.95 by 7.6 and 6.5 percentage points, respectively. The risk warning mechanism leverages RC-YOLOv8’s defect detection results to score risks at multiple levels and trigger warnings based on defect severity, enabling proactive maintenance actions. This approach integrates lightweight network design with a risk assessment framework, offering new perspectives for improving construction quality management. The RC-YOLOv8 model effectively addresses challenges in detecting and assessing concrete defects, such as cracks and exposed rebar, in complex construction conditions. By integrating lightweight network designs with precise detection capabilities, the RC-YOLOv8 model enables real-time risk scoring and classification based on defect severity. This allows construction teams to prioritize maintenance tasks and respond promptly to potential safety issues. The model’s adaptability to resource-constrained devices further supports on-site deployment, facilitating timely decision making and improving the overall management of construction quality and safety.
publisherAmerican Society of Civil Engineers
titleEnhancing Quality Management: Lightweight Detection and Risk Warning of Concrete Cracks and Rebar Exposure Using Improved YOLOv8
typeJournal Article
journal volume151
journal issue8
journal titleJournal of Construction Engineering and Management
identifier doi10.1061/JCEMD4.COENG-16677
journal fristpage04025087-1
journal lastpage04025087-15
page15
treeJournal of Construction Engineering and Management:;2025:;Volume ( 151 ):;issue: 008
contenttypeFulltext


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