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An efficient stochastic approach for building footprint extraction from digital elevation models

机译:一种从数字高程模型提取建筑足迹的有效随机方法

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In the past two decades, building detection and reconstruction from remotely sensed data has been an active research topic in the photogrammetric and remote sensing communities. Recently, effective high level approaches have been developed, i.e., the ones involving the minimization of an energetic formulation. Vet, their efficiency has to be balanced by the amount of processing power required to obtain good results.rnIn this paper, we introduce an original energetic model for building footprint extraction from high resolution digital elevation models (≤1 m) in urban areas. Our goal is to formulate the energy in an efficient way, easy to parametrize and fast to compute, in order to get an effective process still providing good results.rnOur work is based on stochastic geometry, and in particular on marked point processes of rectangles. We therefore try to obtain a reliable object configuration described by a collection of rectangular building footprints. To do so, an energy function made up of two terms is defined: the first term measures the adequacy of the objects with respect to the data and the second one has the ability to favour or penalize some footprint configurations based on prior knowledge (alignment, overlapping,...). To minimize the global energy, we use a Reversible Jump Monte Carlo Markov Chain (RJMCMC) sampler coupled with a simulated annealing algorithm, leading to an optimal configuration of objects. Various results from different areas and resolutions are presented and evaluated. Our work is also compared with an already existing methodology based on the same mathematical framework that uses a much more complex energy function. We show how we obtain similarly good results with a high computational efficiency (between 50 and 100 times faster) using a simplified energy that requires a single data-independent parameter, compared to more than 20 inter-related and hard-to-tune parameters.
机译:在过去的二十年中,利用遥感数据进行建筑物检测和重建一直是摄影测量和遥感领域的活跃研究主题。近来,已经开发出有效的高级方法,即涉及使能量制剂最小化的方法。兽医,其效率必须与获得良好结果所需的处理能力保持平衡。rn本文中,我们介绍了一种原始的能量模型,用于从市区的高分辨率数字高程模型(≤1m)中提取建筑足迹。我们的目标是以一种高效的方式,易于参数化和快速计算的方式来构造能量,以便获得仍可提供良好结果的有效过程。我们的工作是基于随机几何,尤其是基于矩形的标记点过程。因此,我们尝试获得由一系列矩形建筑覆盖区描述的可靠的对象配置。为此,定义了由两个项组成的能量函数:第一个项衡量对象相对于数据的充分性,第二个项具有根据先验知识(对齐,重叠,...)。为了最大程度地降低整体能量,我们使用可逆跳跃蒙特卡洛马尔可夫链(RJMCMC)采样器以及模拟退火算法,以实现对象的最佳配置。呈现并评估了来自不同领域和分辨率的各种结果。我们的工作还与基于使用复杂得多的能量函数的相同数学框架的现有方法进行了比较。我们展示了如何使用简化的能量(与单个数据无关的参数相比,与20多个相互关联且难以调整的参数),以较高的计算效率(快50到100倍)获得类似的良好结果。

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