Saliency-Guided Deep Learning for Bridge Defect Detection in Drone Imagery
By: Loucif Hebbache , Dariush Amirkhani , Mohand Saïd Allili and more
Potential Business Impact:
Finds cracks in bridges using drone pictures.
Anomaly object detection and classification are one of the main challenging tasks in computer vision and pattern recognition. In this paper, we propose a new method to automatically detect, localize and classify defects in concrete bridge structures using drone imagery. This framework is constituted of two main stages. The first stage uses saliency for defect region proposals where defects often exhibit local discontinuities in the normal surface patterns with regard to their surrounding. The second stage employs a YOLOX-based deep learning detector that operates on saliency-enhanced images obtained by applying bounding-box level brightness augmentation to salient defect regions. Experimental results on standard datasets confirm the performance of our framework and its suitability in terms of accuracy and computational efficiency, which give a huge potential to be implemented in a self-powered inspection system.
Similar Papers
Defect Detection in Photolithographic Patterns Using Deep Learning Models Trained on Synthetic Data
Machine Learning (CS)
Finds tiny flaws in computer chips.
Maritime Small Object Detection from UAVs using Deep Learning with Altitude-Aware Dynamic Tiling
CV and Pattern Recognition
Drones find tiny lost things from high up better.
InfraGPT Smart Infrastructure: An End-to-End VLM-Based Framework for Detecting and Managing Urban Defects
CV and Pattern Recognition
Finds road damage and plans repairs automatically.