Abstract
Achieving precise and reliable automated pavement crack detection using deep learning techniques is vital for intelligent pavement maintenance. This study proposes CrackDiffusion, an enhanced-supervised detection framework for pavement crack, combining two supervised and unsupervised stages. In Stage 1, a multi-blur-based cold diffusion anomaly detection model is proposed, which transforms crack-containing images into crack-free images, while simultaneously extracting pixel-level crack features using the Structural Similarity Index measure (SSIM). In Stage 2, an improved supervised U-Net segmentation model enhances accuracy and robustness by building upon the unsupervised results from Stage 1, ultimately producing highly accurate pixel-level segmentation results for cracks. On four public datasets, both the proposed multi-blur-based cold diffusion model and the comprehensive CrackDiffusion framework attained the highest Intersection over Union (IoU) scores, surpassing the IoU scores of the current state-of-the-practice unsupervised and supervised segmentation models.
Original language | English |
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Article number | 105332 |
Journal | Automation in Construction |
Volume | 160 |
DOIs | |
Publication status | Published - Apr 2024 |
Externally published | Yes |
Bibliographical note
Publisher Copyright:© 2023
ASJC Scopus Subject Areas
- Control and Systems Engineering
- Civil and Structural Engineering
- Building and Construction
Keywords
- Artificial neural networks
- Deep learning
- Diffusion model
- Pavement crack
- Semantic segmentation
- Unsupervised crack detection