RD-Crack: A Study of Concrete Crack Detection Guided by a Residual Neural Network Improved Based on Diffusion Modeling
Authors:
Xin Lai,Yubo Huang,Zixi Wang,Yixin Zhou,Chen Gong,Enpei He,Yinmian Li,Fang Zhang
Conference:
ICIC 2024 Posters, Tianjin, China, August 5-8, 2024
Pages:
-
Keywords:
Crack Detection, Structural Health Monitoring, Diffusion Model, Unsupervised Learning, Neural Network Optimization
Abstract
Automated crack detection in concrete structures is an important aspect of structural health monitoring SHM to ensure safety and durability. Traditional methods mainly rely on manual inspection, which suffers from subjectivity and inefficiency challenges. To address these issues, machine learning, especially deep learning techniques, has been gradually adopted to improve accuracy and reduce reliance on large amounts of labeled data. This paper introduces RD-Crack, an innovative concrete crack detection method. Our RD-Crack framework combines the encoder with ResNeXt and extrusion excitation modules for feature extraction and uses a diffusion model for parameter optimization to achieve accurate crack detection in complex engineering environments. Experimental results show that our RD-Crack outperforms other state-of-the-art methods in comprehensive performance.
BibTeX Citation:
@inproceedings{ICIC2024,
author = {Xin Lai,Yubo Huang,Zixi Wang,Yixin Zhou,Chen Gong,Enpei He,Yinmian Li,Fang Zhang},
title = {RD-Crack: A Study of Concrete Crack Detection Guided by a Residual Neural Network Improved Based on Diffusion Modeling},
booktitle = {Proceedings of the 20th International Conference on Intelligent Computing (ICIC 2024)},
month = {August},
date = {5-8},
year = {2024},
address = {Tianjin, China},
pages = {-},
}