Jung Jaewook, Jwa Yoonseok, Sohn Gunho
Department of Earth and Space Science and Engineering, York University, 4700 Keele Street, Toronto M3J 1P3, ON, Canada.
Sensors (Basel). 2017 Mar 19;17(3):621. doi: 10.3390/s17030621.
With rapid urbanization, highly accurate and semantically rich virtualization of building assets in 3D become more critical for supporting various applications, including urban planning, emergency response and location-based services. Many research efforts have been conducted to automatically reconstruct building models at city-scale from remotely sensed data. However, developing a fully-automated photogrammetric computer vision system enabling the massive generation of highly accurate building models still remains a challenging task. One the most challenging task for 3D building model reconstruction is to regularize the noises introduced in the boundary of building object retrieved from a raw data with lack of knowledge on its true shape. This paper proposes a data-driven modeling approach to reconstruct 3D rooftop models at city-scale from airborne laser scanning (ALS) data. The focus of the proposed method is to implicitly derive the shape regularity of 3D building rooftops from given noisy information of building boundary in a progressive manner. This study covers a full chain of 3D building modeling from low level processing to realistic 3D building rooftop modeling. In the element clustering step, building-labeled point clouds are clustered into homogeneous groups by applying height similarity and plane similarity. Based on segmented clusters, linear modeling cues including outer boundaries, intersection lines, and step lines are extracted. Topology elements among the modeling cues are recovered by the Binary Space Partitioning (BSP) technique. The regularity of the building rooftop model is achieved by an implicit regularization process in the framework of Minimum Description Length (MDL) combined with Hypothesize and Test (HAT). The parameters governing the MDL optimization are automatically estimated based on Min-Max optimization and Entropy-based weighting method. The performance of the proposed method is tested over the International Society for Photogrammetry and Remote Sensing (ISPRS) benchmark datasets. The results show that the proposed method can robustly produce accurate regularized 3D building rooftop models.
随着城市化进程的加快,对建筑资产进行高精度、语义丰富的三维虚拟化,对于支持包括城市规划、应急响应和基于位置的服务在内的各种应用变得更加关键。已经开展了许多研究工作,以从遥感数据中自动重建城市规模的建筑模型。然而,开发一个能够大量生成高精度建筑模型的全自动摄影测量计算机视觉系统仍然是一项具有挑战性的任务。三维建筑模型重建中最具挑战性的任务之一是,在对真实形状缺乏了解的情况下,对从原始数据中检索到的建筑物体边界引入的噪声进行规范化处理。本文提出了一种数据驱动的建模方法,用于从机载激光扫描(ALS)数据中重建城市规模的三维屋顶模型。该方法的重点是从给定的建筑边界噪声信息中逐步隐式推导三维建筑屋顶的形状规则性。本研究涵盖了从低级处理到逼真的三维建筑屋顶建模的完整三维建筑建模链。在元素聚类步骤中,通过应用高度相似性和平面相似性,将带有建筑标签的点云聚类为同质组。基于分割后的聚类,提取包括外边界、交线和阶梯线在内的线性建模线索。通过二叉空间划分(BSP)技术恢复建模线索之间的拓扑元素。通过在最小描述长度(MDL)框架下结合假设与测试(HAT)的隐式正则化过程,实现建筑屋顶模型的规则性。基于最小-最大优化和基于熵的加权方法,自动估计控制MDL优化的参数。在国际摄影测量与遥感学会(ISPRS)基准数据集上对所提方法的性能进行了测试。结果表明所提方法能够稳健地生成准确的规范化三维建筑屋顶模型。