@article { author = {Hoang, Nhat-Duc and Nguyen, Quoc-Lam}, title = {Computer Vision-Based Recognition of Pavement Crack Patterns Using Light Gradient Boosting Machine, Deep Neural Network, and Convolutional Neural Network}, journal = {Journal of Soft Computing in Civil Engineering}, volume = {7}, number = {3}, pages = {21-51}, year = {2023}, publisher = {Pouyan Press}, issn = {2588-2872}, eissn = {2588-2872}, doi = {10.22115/scce.2023.367276.1547}, abstract = {The performance and serviceability of asphalt pavements have a direct influence on people's daily lives. Timely detection of pavement cracks is crucial in the task of periodic pavement survey. This paper proposes and verifies a novel computer vision-based method for recognizing pavement crack patterns. Image processing techniques, including Gaussian steerable filters, projection integrals, and image texture analyses, are employed to characterize the surface condition of asphalt pavement roads. Light Gradient Boosting Machine, Deep Neural Network, and Convolutional Neural Network are employed to recognize various patterns including longitudinal, transverse, diagonal, minor fatigue, and severe fatigue cracks. A dataset, including 12,000 samples, has been collected to construct and verify the computer vision-based approaches. Based on experiments, it can be found that all three machine learning models are capable of delivering good categorization results with an accuracy rate > 0.93 and Cohen's Kappa coefficient > 0.76. Notably, the Light Gradient Boosting Machine has achieved the most desired performance with an accuracy rate > 0.96 and Cohen's Kappa coefficient > 0.88.}, keywords = {computer vision,image processing,Pavement cracks,Light gradient boosting machine,Deep Neural Network}, url = {https://www.jsoftcivil.com/article_168894.html}, eprint = {https://www.jsoftcivil.com/article_168894_3a5faac9b41ed3f5d9273a1da3c0b4b3.pdf} }