Road extraction in suburban areas by region-based road subgraph extraction and evaluation

A. Grote, C. Heipke, F. Rottensteiner, Hannes Meyer
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引用次数: 10

Abstract

In this paper, a road extraction approach for suburban areas from high resolution CIR images is presented. The approach is region-based: the image is first segmented using the normalized cuts algorithm, then the initial segments are grouped to form segments, and road parts are extracted from these segments. Ideally roads in the image correspond to only one extracted road part, but they are often covered by several road parts with gaps between them. In order to combine these road parts, neighbouring road parts are connected to a road subgraph if there is evidence that they belong to the same road, such as similar direction and smooth continuation. This process allows several branches in the subgraph which is why another step follows to evaluate the subgraphs and divide them at gaps which show weak connections. The subgraph evaluation step is the focus of this paper. Linear programming is used for the subgraph evaluation after gap weights are determined. Two ways of determining gap weights are discussed, one using criteria which describe the properties of the road parts and their interrelations, and one using context objects (vehicles, trees, vegetation) in the gaps. The determination of the gap weights and the division of the road subgraphs is shown with an example.
基于区域的道路子图提取与评价的城郊道路提取
提出了一种基于高分辨率CIR图像的城郊道路提取方法。该方法是基于区域的:首先使用归一化切割算法对图像进行分割,然后将初始片段分组形成路段,并从这些路段中提取道路部分。理想情况下,图像中的道路只对应于一个提取的道路部分,但它们通常被几个道路部分覆盖,它们之间有间隙。为了组合这些道路部分,如果有证据表明它们属于同一条道路,例如方向相似和平滑延续,则将相邻的道路部分连接到道路子图中。这个过程允许在子图中有几个分支,这就是为什么接下来的另一个步骤是评估子图并在显示弱连接的间隙处划分它们。子图评估步骤是本文研究的重点。确定间隙权值后,采用线性规划方法对子图进行评估。讨论了确定间隙权重的两种方法,一种使用描述道路部分及其相互关系的属性的标准,另一种使用间隙中的上下文对象(车辆,树木,植被)。通过实例说明了道路子图的间距权值的确定和划分。
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