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A Rooftop Extraction Method Using Color Feature, Height Map Information and Road Information

机译:使用彩色特征,高度地图信息和道路信息的屋顶提取方法

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This paper presents a new method for rooftop extraction that integrates color features, height map, and road information in a level set based segmentation framework. The proposed method consists of two steps: rooftop detection and rooftop segmentation. The first step requires the user to provide a few example rooftops from which the color distribution of rooftop pixels is estimated. For better robustness, we obtain superpixels of the input satellite image, and then classify each superpixel as rooftop or non-rooftop based on its color features. Using the height map, we can remove those detected rooftop candidates with small height values. Level set based segmentation of each detected rooftop is then performed based on color and height information, by incorporating a shape-prior term that allows the evolving contour to take on the desired rectangle shape. This requires performing rectangle fitting to the evolving contour, which can be guided by the road information to improve the fitting accuracy. The performance of the proposed method has been evaluated on a satellite image of 1 km×1 km in area, with a resolution of one meter per pixel. The method achieves detection rate of 88.0% and false alarm rate of 9.5%. The average Dice's coefficient over 433 detected rooftops is 73.4%. These results demonstrate that by integrating the height map in rooftop detection and by incorporating road information and rectangle fitting in a level set based segmentation framework, the proposed method provides an effective and useful tool for rooftop extraction from satellite images.
机译:本文介绍了一种新方法,用于在基于级别集的分段框架中集成了彩色特征,高度图和道路信息的屋顶提取方法。所提出的方法包括两个步骤:屋顶检测和屋顶分割。第一步要求用户提供一些示例屋顶,从中估计屋顶像素的颜色分布。为了更好的稳健性,我们获得输入卫星图像的超像素,然后根据其颜色特征将每个SuperPixel分类为屋顶或非屋顶。使用高度图,我们可以删除那些具有小高度值的检测到的屋顶候选。然后基于颜色和高度信息结合成形的术语来执行每个检测到的屋顶的基于级别的分割,允许演化轮廓采取所需的矩形形状。这需要对演化轮廓执行矩形,这可以由道路信息引导以提高拟合精度。所提出的方法的性能已经在面积1公里的卫星图像上进行评估,每个像素的分辨率为一米。该方法达到88.0%的检出率,误报率为9.5%。平均骰子的系数超过433检测到的屋顶是73.4%。这些结果表明,通过将高度图集成在屋顶检测中,并且通过在基于水平集的分割框架中结合道路信息和矩形拟合,所提出的方法为来自卫星图像的屋顶提取提供了有效和有用的工具。

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