TY - GEN
T1 - RE-Net
T2 - 19th IEEE Conference on Industrial Electronics and Applications, ICIEA 2024
AU - Ji, Shihao
AU - Jiang, Kun
AU - Wang, Peng
AU - He, Mingyi
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Road extraction is one of significant research hot-spots in the area of remote sensing images processing and applications. Recently, deep learning based methods have become the mainstream research method due to their high degree of automation and superior performance. However, the unique characteristics of roads in airborne or satellite remote sensing images still limit the accuracy and connectivity of road extraction, such as complex and diverse backgrounds, small proportions, large spans, multiple confusing categories, occlusion, and limit resolution. To address some of these challenges, we propose a new Road Exaction Network (RE-Net) with deep learning and geometric priors for road extraction from remote sensing images for better accuracy and connectivity of road extraction. The proposed RE-Net is composed by Detail branch module, Fusion module and MHNet which is composed by MSCAN backbone and Ham module. The main contributions of this paper are as follows. A new Road Extraction network with Detail supervision, Fusion module and MSCANN as backbone net, using dual branch semantic segmentation model based on the geometric prior knowledge of roads. The segmentation branch uses MSCAN as the backbone network, which can better adapt to the geometric shape of the road and extract multi-scale strip-like features. In addition, a lightweight Ham module to enhance the modeling ability of the model for long-term distance dependencies, and uses a refined feature fusion module to fully fuse the shallow spatial features and the semantic features. The detail branch combines road edge priors, which can supervise the model to pay more attention to road edge information. The experimental results on the DeepGlobe dataset and CHN6-CUG dataset demonstrate that the proposed RE-Net can effectively improve the accuracy and connectivity of road extraction from remote sensing images.
AB - Road extraction is one of significant research hot-spots in the area of remote sensing images processing and applications. Recently, deep learning based methods have become the mainstream research method due to their high degree of automation and superior performance. However, the unique characteristics of roads in airborne or satellite remote sensing images still limit the accuracy and connectivity of road extraction, such as complex and diverse backgrounds, small proportions, large spans, multiple confusing categories, occlusion, and limit resolution. To address some of these challenges, we propose a new Road Exaction Network (RE-Net) with deep learning and geometric priors for road extraction from remote sensing images for better accuracy and connectivity of road extraction. The proposed RE-Net is composed by Detail branch module, Fusion module and MHNet which is composed by MSCAN backbone and Ham module. The main contributions of this paper are as follows. A new Road Extraction network with Detail supervision, Fusion module and MSCANN as backbone net, using dual branch semantic segmentation model based on the geometric prior knowledge of roads. The segmentation branch uses MSCAN as the backbone network, which can better adapt to the geometric shape of the road and extract multi-scale strip-like features. In addition, a lightweight Ham module to enhance the modeling ability of the model for long-term distance dependencies, and uses a refined feature fusion module to fully fuse the shallow spatial features and the semantic features. The detail branch combines road edge priors, which can supervise the model to pay more attention to road edge information. The experimental results on the DeepGlobe dataset and CHN6-CUG dataset demonstrate that the proposed RE-Net can effectively improve the accuracy and connectivity of road extraction from remote sensing images.
KW - Deep learning
KW - geometric prior
KW - remote sensing images
KW - road extraction
UR - http://www.scopus.com/inward/record.url?scp=85205734984&partnerID=8YFLogxK
U2 - 10.1109/ICIEA61579.2024.10664713
DO - 10.1109/ICIEA61579.2024.10664713
M3 - 会议稿件
AN - SCOPUS:85205734984
T3 - 2024 IEEE 19th Conference on Industrial Electronics and Applications, ICIEA 2024
BT - 2024 IEEE 19th Conference on Industrial Electronics and Applications, ICIEA 2024
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 5 August 2024 through 8 August 2024
ER -