Smart Structures and Systems
Volume 27, Number 6, 2021, pages 1031-1040
DOI: 10.12989/sss.2021.27.6.1031
A deep learning-based vision enhancement method for UAV assisted visual inspection of concrete cracks
Yanzhi Qi, Cheng Yuan, Qingzhao Kong, Bing Xiong and Peizhen Li
Abstract
Implementing unmanned aerial vehicles (UAVs) on concrete surface-crack inspection leads to a promising visual crack detection approach. One of the challenges for automated field visual cracking inspection is image degradation caused by the rain or fog and motion blur during data acquisition. The present study combines two deep neural networks to address the image degradation problem. By using the Variance of Laplacian algorithm for quantifying image clarity, the proposed deep neural networks can remarkably enhance the sharpness of the degraded images. After vision enhancement process, Mask Region Convolutional Neutral Network (Mask R-CNN) was developed to perform automated crack identification and segmentation. Results show a 8~13% enhancement in prediction accuracy compared to the degraded images, indicating that the proposed deep learning-based vision enhancement method can effectivey identify and segment concrete surface cracks from photos captured by UAVs.
Key Words
RRA-GAN; SR GAN; crack detection; Mask R-CNN; deep learning; SHM
Address
(1) Yanzhi Qi, Cheng Yuan, Qingzhao Kong, Peizhen Li:
Department of Disaster Mitigation for Structures, Tongji University, Shanghai, China;
(2) Bing Xiong:
State Key Laboratory of Disaster Reduction in Civil Engineering, Tongji University, Shanghai, China.