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Photogrammetric Point Cloud Segmentation and Object Information Extraction for Creating Virtual Environments and Simulations

机译:摄影测量点云分割和对象信息提取,用于创建虚拟环境和模拟

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摘要

Photogrammetric techniques have dramatically improved over the last few years, enabling the creation of visually compelling three-dimensional (3D) meshes using unmanned aerial vehicle imagery. These high-quality 3D meshes have attracted notice from both academicians and industry practitioners in developing virtual environments and simulations. However, photogrammetric generated point clouds and meshes do not allow both user-level and system-level interaction because they do not contain the semantic information to distinguish between objects. Thus, segmenting generated point clouds and meshes and extracting the associated object information is a necessary step. A framework for point cloud and mesh classification and segmentation is presented in this paper. The proposed framework was designed considering photogrammetric data-quality issues and provides a novel way of extracting object information, including (1) individual tree locations and related features and (2) building footprints. Experiments were conducted to rank different point descriptors and evaluate supervised machine-learning algorithms for segmenting photogrammetric generated point clouds. The proposed framework was validated using data collected at the University of Southern California (USC) and the Muscatatuck Urban Training Center (MUTC).
机译:在过去的几年中,摄影测量技术得到了极大的改进,从而可以使用无人机图像创建视觉上引人注目的三维(3D)网格。这些高质量的3D网格物体在开发虚拟环境和仿真方面引起了学术界和行业从业者的关注。但是,摄影测量生成的点云和网格不允许用户级和系统级交互,因为它们不包含区分对象的语义信息。因此,分割生成的点云和网格并提取关联的对象信息是必要的步骤。本文提出了一种用于点云和网格分类及分割的框架。提出的框架是在考虑摄影测量数据质量问题的情况下设计的,并提供了一种提取对象信息的新颖方法,包括(1)各个树的位置和相关特征以及(2)建筑物的占地面积。进行了实验以对不同的点描述符进行排序,并评估用于监督摄影测量生成的点云的监督机器学习算法。拟议的框架已使用在南加州大学(USC)和Muscatatuck城市培训中心(MUTC)收集的数据进行了验证。

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