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Extraction of building roof contours from the integration of high-resolution aerial imagery and laser data using Markov random fields

机译:使用马尔可夫随机场从高分辨率航空影像和激光数据的集成中提取建筑物屋顶轮廓

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This study proposes a method for the automatic extraction of building roof contours from the integration of airborne laser scanning (ALS) and photogrammetric data using the Markov random field probabilistic approach. Initially, a normalised digital surface model (nDSM) obtained from the ALS point cloud is segmented to obtain the polygons that represent high objects in the scene. These polygons are projected onto the image to delimit regions (sub-images) that will be segmented in the image, which allows the extraction of polygons in the image that represent the corresponding high objects. The polygons that represent roof contours are identified by the optimisation of an energy function that models the geometric and contextual properties of building roof contours via the genetic algorithm. This energy function combines the polygons extracted from the nDSM and from the image. The proposed method was evaluated with real data, including high-resolution aerial images and ALS data. The experimental results showed that the proposed method works properly, exhibits few failures and has average completeness and correctness rates above 90%.
机译:这项研究提出了一种使用马尔可夫随机场概率方法从机载激光扫描(ALS)和摄影测量数据的集成中自动提取建筑物屋顶轮廓的方法。最初,将从ALS点云获得的归一化数字表面模型(nDSM)进行分割,以获得代表场景中高对象的多边形。这些多边形被投影到图像上以界定将在图像中分割的区域(子图像),这允许提取图像中代表相应高对象的多边形。代表屋顶轮廓的多边形是通过优化能量函数来识别的,该能量函数通过遗传算法对建筑物屋顶轮廓的几何和背景属性进行建模。该能量函数结合了从nDSM和图像中提取的多边形。利用包括高分辨率航空影像和ALS数据在内的真实数据对所提出的方法进行了评估。实验结果表明,该方法工作正确,故障少,平均完整性和正确率均在90%以上。

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