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Road Extraction from Very High Resolution Images Using Weakly labeled OpenStreetMap Centerline
2019
ISPRS International Journal of Geo-Information
Road networks play a significant role in modern city management. It is necessary to continually extract current road structure, as it changes rapidly with the development of the city. Due to the success of semantic segmentation based on deep learning in the application of computer vision, extracting road networks from VHR (Very High Resolution) imagery becomes a method of updating geographic databases. The major shortcoming of deep learning methods for road networks extraction is that they need
doi:10.3390/ijgi8110478
fatcat:ji6wqnk4arh3liugukvz6x3sqa