Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Semantic Segmentation of Cracks Using DeepLabv3+
Detecting cracks of structures is a crucial role in the structural health monitoring. Destructive techniques and non-destructive approaches have been widely used to evaluate the structural health. Recently, a deep learning-based approach is developed for noncontact inspections. The goal of this paper is to suggest an efficient backbone of Resnet family in terms of crack detections using DeepLabv3+ architecture for the structural health monitoring. Five kinds of backbones, namely Resnet-18, Restnet-34, Resnet-50, Resnet-101, and Resnet-152 were implemented in this study. Adaptive moment estimation (Adam) optimizer and dice loss function were applied to train the models. In addition, the mean intersection over union (IoU) was employed to investigate the accuracy of proposed models. The study results show that all backbones effectively detected the concrete cracks with over 90% IoU. The Resnet-50 presents the best performance of 93.5% IoU for DeepLabv3+ architecture. The findings highlighted the feasibility of proposed method in terms of structural crack detections.
Semantic Segmentation of Cracks Using DeepLabv3+
Detecting cracks of structures is a crucial role in the structural health monitoring. Destructive techniques and non-destructive approaches have been widely used to evaluate the structural health. Recently, a deep learning-based approach is developed for noncontact inspections. The goal of this paper is to suggest an efficient backbone of Resnet family in terms of crack detections using DeepLabv3+ architecture for the structural health monitoring. Five kinds of backbones, namely Resnet-18, Restnet-34, Resnet-50, Resnet-101, and Resnet-152 were implemented in this study. Adaptive moment estimation (Adam) optimizer and dice loss function were applied to train the models. In addition, the mean intersection over union (IoU) was employed to investigate the accuracy of proposed models. The study results show that all backbones effectively detected the concrete cracks with over 90% IoU. The Resnet-50 presents the best performance of 93.5% IoU for DeepLabv3+ architecture. The findings highlighted the feasibility of proposed method in terms of structural crack detections.
Semantic Segmentation of Cracks Using DeepLabv3+
Lecture Notes in Civil Engineering
Reddy, J. N. (Herausgeber:in) / Wang, Chien Ming (Herausgeber:in) / Luong, Van Hai (Herausgeber:in) / Le, Anh Tuan (Herausgeber:in) / Nguyen, Truong-Giang (Autor:in) / Do, Tung-Lam (Autor:in) / Nguyen, Tan-No (Autor:in) / Nguyen, Nhut-Nhut (Autor:in)
The International Conference on Sustainable Civil Engineering and Architecture ; 2023 ; Da Nang City, Vietnam
Proceedings of the Third International Conference on Sustainable Civil Engineering and Architecture ; Kapitel: 165 ; 1539-1546
12.12.2023
8 pages
Aufsatz/Kapitel (Buch)
Elektronische Ressource
Englisch
Segmentation of Concrete Surface Cracks Using DeeplabV3+ Architecture
Springer Verlag | 2023
|Automated Detection for Concrete Surface Cracks Based on Deeplabv3+ BDF
DOAJ | 2023
|High-precision segmentation and quantification of tunnel lining crack using an improved DeepLabV3+
Elsevier | 2025
|Semantic segmentation of cracks: Data challenges and architecture
Elsevier | 2022
|Image Segmentation Method for Sweetgum Leaf Spots Based on an Improved DeeplabV3+ Network
DOAJ | 2022
|