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A line-based progressive refinement of 3D rooftop models using airborne LiDAR data with single view imagery

机译:使用机载LiDAR数据和单视图图像对3D屋顶模型进行基于行的逐步优化

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摘要

In recent years, many mega-cities have provided 3D photorealistic virtual models, a digital replica of the geometrical structures of cities, for more effective decision support in public safety, urban planning, and engineering applications. Most research attempts at reconstructing geometric models of cities treat such urban systems as if they are in a static environment. However, cities are dynamic systems that continuously change over time. Accordingly, their virtual representations need to be regularly updated in a timely manner to allow for accurate analysis. The concept of progressive city modelling is to continuously reconstruct city models by accommodating changes recognized in the spatio-temporal domain, while preserving unchanged structures. This paper proposes a novel fusion method to progressively refine building rooftop models over time by integrating multi-sensor data. The proposed method integrates the line modelling cues of existing rooftop models produced by airborne laser scanning data with the new ones extracted from optical imagery. This modelling cue integration process is developed to progressively rectify geometric errors based on Hypothesize and Test optimization using Minimum Description Length. A stochastic method, Markov Chain Monte Carlo, coupled with simulated annealing, is employed to generate model hypotheses and perform a global optimization for finding the best solution. This fusion method is designed to offset the limitations of respective sensors and thus rectify various modelling errors (shape deformation, boundary displacement, and orientation errors) that are often involved in rooftop building models. The performance evaluation tested over the ISPRS show the proposed modelling method can achieve the improvements of 1.8%, 0.54 degrees, 0.33 m, and 0.007 for the quality, orientation difference, Hausdorff distance, and turning function distance, respectively, compared with initial building models. In addition, the proposed methods show the highest performance in the quality measure among the state of the art methods, while demonstrates competitive performance in the completeness and correctness measures.
机译:近年来,许多大城市提供了3D逼真的虚拟模型,城市几何结构的数字副本,以在公共安全,城市规划和工程应用中提供更有效的决策支持。大多数研究重建城市几何模型的尝试都将此类城市系统视为处于静态环境中。但是,城市是动态系统,会随着时间不断变化。因此,它们的虚拟表示需要及时地定期更新以允许准确的分析。渐进式城市建模的概念是通过适应时空域中公认的变化来不断地重构城市模型,同时保留不变的结构。本文提出了一种新颖的融合方法,通过集成多传感器数据来逐步完善建筑物屋顶模型。所提出的方法将机载激光扫描数据生成的现有屋顶模型的线建模线索与从光学图像提取的新模型进行了整合。开发此建模提示集成过程的目的是,基于假设最小化和使用最小描述长度的测试优化,逐步纠正几何错误。马尔可夫链蒙特卡罗(Markov Chain Monte Carlo)随机方法与模拟退火相结合,用于生成模型假设并执行全局优化以找到最佳解决方案。此融合方法旨在抵消各个传感器的限制,从而纠正屋顶建筑模型中经常涉及的各种建模误差(形状变形,边界位移和方向误差)。在ISPRS上进行的性能评估测试表明,与初始建筑模型相比,所提出的建模方法可以在质量,方向差,Hausdorff距离和转向功能距离上分别实现1.8%,0.54度,0.33 m和0.007的改进。 。此外,所提出的方法在最先进的方法中,在质量度量中表现出最高的性能,而在完整性和正确性度量中则表现出竞争性能。

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