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Road Extraction from High Resolution Remote Sensing Images Based on Vector Field Learning

机译:基于矢量场学习的高分辨率遥感图像的道路提取

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摘要

Accurate and up-to-date road network information is very important for the Geographic Information System (GIS) database, traffic management and planning, automatic vehicle navigation, emergency response and urban pollution sources investigation. In this paper, we use vector field learning to extract roads from high resolution remote sensing imaging. This method is usually used for skeleton extraction in nature image, but seldom used in road extraction. In order to improve the accuracy of road extraction, three vector fields are constructed and combined respectively with the normal road mask learning by a two-task network. The results show that all the vector fields are able to significantly improve the accuracy of road extraction, no matter the field is constructed in the road area or completely outside the road. The highest F1 score is 0.7618, increased by 0.053 compared with using only mask learning.
机译:准确和最新的道路网络信息对于地理信息系统(GIS)数据库,交通管理和规划,自动车辆导航,应急响应和城市污染来源调查非常重要。在本文中,我们使用矢量场学习从高分辨率遥感成像中提取道路。该方法通常用于自然图像中的骨架提取,但很少用于道路提取。为了提高道路提取的准确性,通过双任务网络分别构造和组合三个矢量场并组合。结果表明,无论在道路领域还是完全在道路外,所有矢量字段都能够显着提高道路提取的准确性。最高F1得分为0.7618,而使用仅使用掩模学习比较增加0.053。

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