Tags:Civil infrastructure, Deep learning, Image processing, Image segmentation and Machine Learning
Abstract:
In this paper, we studied the application of deep learning and image segmentation techniques for crack detection in civil infrastructure. We investigated the effectiveness of some deep learning models, such as Inception, ResNet, MobileNet, VGG, and U-Net, in detecting cracks on civil infrastructure surfaces. Additionally, we implemented two segmentation models, U-Net and SAM, to enhance the precision of crack extraction from images. Through simulations and comparative analysis, we evaluated the performance of the models in accurately identifying and delineating cracks in civil infrastructure. The results demonstrate the efcacy of the proposed approach in achieving accurate crack detection, which is crucial for ensuring the structural integrity and safety of civil infrastructure. The proposed model achieved an accuracy of 100% and IoU of 0.95.
Civil Infrastructure Crack Detection Using Deep Learning and Image Segmentation-Based Techniques