航拍图像中道路网络的自动提取

Xuemei Ding, Wenjing Kang, Jiwen Cui, L. Ao
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引用次数: 33

摘要

航空影像分析一直是城市分析的重要研究课题。如果能够从航拍图像中自动提取城市道路网,将简化城市几何目标的分类和测量。本文提出了一种从高分辨率航拍图像中自动提取道路网的方法。这些道路是通过使用连续线性特征检测算法发现的,该算法主要基于以下三个步骤:首先,预处理,结合局部选择窗法和中值滤波来去除噪声和可能不相关的小尺度细节;然后根据一定的规则在可变重叠窗口中进行交叉熵分割算法,生成二值边缘图;为了检测直线,对二值边缘映射进行霍夫变换,得到候选直线的参数。实验表明,该方法能够正确地从航拍图像中提取道路网
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Automatic extraction of road network from aerial images
Analysis of aerial images has been an important research topic for urban analysis. The classification and measurement for geometrical objects of a city will be simplified if its road network could be automatically extracted from aerial images. In this paper we present an automatic method to extract road network from high-resolution aerial images. These roads are found through the use of a consecutive linear features detection algorithm that is mainly based on the three following steps: first, pre-processing, a local selective window method followed by median filter are combined to remove noise and possibly irrelevant small scale details; which is followed by a cross entropy segmentation algorithm in variable overlapping window according to some rules, thus generating a binary edge map; in order to detect straight lines, a Hough transform is applied to the binary edge map to get the parameters of candidate lines. The experiment shows that the proposed method can be used to correctly extract road network from aerial images
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