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Automatic Road Extraction From Remote Sensing Images Based on a Normalized Second Derivative Map

机译:基于归一化二阶导数图的遥感影像自动道路提取

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In this letter, we propose a novel automatic algorithm for road extraction from remote sensing images. The algorithm includes low- and high-level processing. In the low-level processing, we determine a normalized second derivative map of road profiles of a generalized bar shape, which is width invariant and contrast proportional, and accordingly obtain initial road center pixels. In the high-level processing, using the map and initial center pixels, we initially determine road segments. The segments are then locally refined using their orientation randomness and length-to-width ratio and further refined via global graph-cut optimization. A final road network is thereby extracted in a robust manner. Experimental results demonstrate that the proposed algorithm provides noticeably more robust and higher road extraction performance in various images compared with the existing algorithms.
机译:在这封信中,我们提出了一种从遥感图像中提取道路的新型自动算法。该算法包括低级和高级处理。在低级处理中,我们确定广义条形的道路轮廓的归一化二阶导数图,该宽度不变且对比度成比例,并且因此获得初始道路中心像素。在高级处理中,使用地图和初始中心像素,我们首先确定路段。然后使用其方向随机性和长宽比对片段进行局部优化,并通过全局图切割优化进一步优化。由此以鲁棒的方式提取最终的道路网络。实验结果表明,与现有算法相比,该算法在各种图像中均提供了更鲁棒和更高的道路提取性能。

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