A weakly supervised road extraction approach via deep convolutional nets based image segmentation

W. Xia, Nan. Zhong, Danyang Geng, L. Luo
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引用次数: 10

Abstract

Extracting road information from remote sensing images plays an import role for many practical areas. In this paper, an approach for road extraction is proposed, in order to obtain standard road region with high accuracy. By utilizing the road design and construction specifications made by the transportation industry, the road objects are assigned into different classes. Then the corresponding task is considered as an image segmentation approach, and deep convolutional network is applied to perform pixel-level estimation to predict the ownership probability of different classes. Besides, a modification processing approach is presented to exploit the segmentation result and obtain formal road network by connecting the missing or unsmooth road subsections. Experiments on remote sensing images are performed, and show that the method is efficient for acquiring multi-type roads from complex situations.
基于图像分割的深度卷积网络弱监督道路提取方法
从遥感影像中提取道路信息在许多实际领域具有重要意义。为了获得高精度的标准道路区域,本文提出了一种道路提取方法。利用交通运输业制定的道路设计和施工规范,将道路对象划分为不同的类别。然后将相应的任务作为一种图像分割方法,利用深度卷积网络进行像素级估计,预测不同类别的所有权概率。此外,提出了一种修正处理方法,利用分割结果,通过连接缺失或不光滑的路段,得到正式的道路网。在遥感图像上进行了实验,结果表明该方法能够有效地获取复杂情况下的多类型道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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