Abolfazl AbdollahiBiswajeet PradhanGaurav SharmaKhairul Nizam Abdul MauludAbdullah Alamri
Road network extraction from remotely sensed imagery has become a powerful tool for updating geospatial databases, owing to the success of convolutional neural network (CNN) based deep learning semantic segmentation techniques combined with the high-resolution imagery that modern remote sensing provides.However, most CNN approaches cannot obtain high precision segmentation maps with rich details when processing high-resolution remote sensing imagery.In this study, we propose a generative adversarial network (GAN)-based deep learning approach for road segmentation from high-resolution aerial imagery.In the generative part of the presented GAN approach, we use a modified UNet model (MUNet) to obtain a high-resolution segmentation map of the road network.In combination with simple pre-processing comprising edge-preserving filtering, the proposed approach offers a significant improvement in road network segmentation compared with prior approaches.In experiments conducted on the Massachusetts road image dataset, the proposed approach achieves 91.54% precision and 92.92% recall, which correspond to a Mathews correlation coefficient (MCC) of 91.13%, a Mean intersection over union (MIOU) of 87.43% and a F1-score of 92.20%.Comparisons demonstrate that the proposed GAN framework outperforms prior CNN-based approaches and is particularly effective in preserving edge information.
Abolfazl AbdollahiBiswajeet PradhanGaurav SharmaKhairul Nizam Abdul MauludAbdullah Alamri
Abolfazl AbdollahiBiswajeet PradhanGaurav SharmaKhairul Nizam Abdul MauludAbdullah Alamri
Wenxin ChenTing ZhangXing Zhao
Vemireddy AnvithaR ElakkiyaMohan GurusamyGundala PallaviR Prasanna Kumar