TY - CONF TI - Efficient Pavement Distress Detection and Visual Management in Lean Construction Based on BIM and Deep Learnin C1 - Lille, France C3 - Proceedings of the 31st Annual Conference of the International Group for Lean Construction (IGLC31) SP - 174 EP - 185 PY - 2023 DO - 10.24928/2023/0230 AU - Deng, Ting AU - Tan, Yi AD - Assistant Professor, Key Laboratory for Resilient Infrastructures of Coastal Cities (Shenzhen University), Ministry of Education, Shenzhen University, Shenzhen, China, tanyi@szu.edu.cn, orcid.org/0000-0001-8902- 4778 AD - Graduate Student, Sino-Australia Joint Research Center in BIM and Smart Construction, Shenzhen University, Shenzhen, China, dengting20221@163.com, orcid.org/0000-0003-3064-8353 AB - With a wide range of road construction worldwide, the focus of road engineering has shifted to road maintenance and management. This paper presents a research aimed at developing a lean management framework that integrates BIM and deep learning technology to guide lean production applications in road maintenance management. Firstly, the pavement distress dataset is established based on the obtained road point cloud data. Secondly, a deep learning-based 3D object detection network is applied for automatically detect the pavement distress and improve the accuracy and reliability of the detection. After obtaining the detection information of the distress, Dynamo is utilized to realize the efficient visualization management of pavement distresses. Finally, an untrained road section is applied for the experiment. The predicted information of distress is integrated and visualized in BIM model can provide a better maintenance guidance and well promote the transformation of pavement intelligent maintenance management. KW - Lean construction KW - template KW - formatting KW - instructions KW - references. PB - T2 - Proceedings of the 31st Annual Conference of the International Group for Lean Construction (IGLC31) DA - 2023/06/26 CY - Lille, France L1 - http://iglc.net/Papers/Details/2162/pdf L2 - http://iglc.net/Papers/Details/2162 N1 - Export Date: 24 April 2025 DB - IGLC.net DP - IGLC LA - English ER -