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A new generic method for the semi-automatic extraction of river and road networks in low and mid-resolution satellite images

机译:低分辨率和中分辨率卫星图像中河网和路网半自动提取的新通用方法

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This paper addresses the problem of semi-automatic extraction of road or hydrographic networks in satellite images. For that purpose, we propose an approach combining concepts arising from mathematical morphology and hydrology. The method exploits both geometrical and topological characteristics of rivers/roads and their tributaries in order to reconstruct the complete networks. It assumes that the images satisfy the following two general assumptions, which are the minimum conditions for a road/river network to be identifiable and are usually verified in low- to mid-resolution satellite images: (i) visual constraint: most pixels composing the network have similar spectral signature that is distinguishable from most of the surrounding areas; (ii) geometric constraint: a line is a region that is relatively long and narrow, compared with other objects in the image. While this approach fully exploits local (roads/rivers are modeled as elongated regions with a smooth spectral signature in the image and a maximum width) and global (they are structured like a tree) characteristics of the networks, further directional information about the image structures is incorporated. Namely, an appropriate anisotropic metric is designed by using both the characteristic features of the target network and the eigen-decomposition of the gradient structure tensor of the image. Following, the geodesic propagation from a given network seed with this metric is combined with hydrological operators for overland flow simulation to extract the paths which contain most line evidence and identify them with the target network.
机译:本文解决了卫星图像中道路或水文网络半自动提取的问题。为此,我们提出了一种结合数学形态学和水文学概念的方法。该方法利用河流/道路及其支流的几何和拓扑特征,以重建完整的网络。假定图像满足以下两个一般假设,这是可识别道路/河流网络的最低​​条件,并且通常在低分辨率至中分辨率的卫星图像中进行验证:(i)视觉限制:组成像素的大多数像素网络具有相似的频谱特征,可与大多数周围地区区别开来; (ii)几何约束:线是与图像中其他对象相比相对较长和较窄的区域。尽管此方法充分利用了网络的局部(道路/河流建模为在图像中具有平滑的光谱特征且具有最大宽度的细长区域)和全局(它们的结构像树一样)的特征,但还充分利用了有关图像结构的方向信息成立。即,通过使用目标网络的特征和图像的梯度结构张量的本征分解来设计适当的各向异性度量。然后,将具有该度量的给定网络种子的测地线传播与水文算子结合起来,用于陆上水流模拟,以提取包含最多线路证据的路径并将其与目标网络识别。

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