基于动态规则网格的离散数据快速处理

Lichun Sui, Jianfeng Zhu, Shuo Zhang, Jonathan Li
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引用次数: 0

摘要

随着激光雷达、InSAR等新技术在数据采集中的应用,三维点云数据已成为测绘应用中非常重要的数据源。激光雷达为获取大量三维点数据提供了一种方便的方法。高效的激光雷达数据管理和搜索算法是实现激光雷达滤波、显示和三维重建等处理过程的重要基础。如何处理大量离散数据不仅是激光雷达点云数据处理领域的重点和挑战之一,也是DEM生成等其他一些领域的重要内容。而这些海量点的存储、组织和管理方案,在某种程度上会影响后续处理的效率和准确性。本文将介绍一种动态规则网格法。该方法将用于不同区域的机载激光雷达滤波实验。我们将看到使用这种动态规则网格方法处理点云数据的过程和结果。从而证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast processing of discrete data based on dynamical regular grid nets
With the development of LIDAR, InSAR and other new technologies used in the data acquisition, the three dimensional point cloud data has become a very important data source in the Geomatics applications. LIDAR provide a convenient way to acquire a massive three dimensional point data. A high efficiency algorithm for the management and searching of LIDAR data is an important foundation of the procedure of LIDAR processing such as filtering, display and threedimensional reconstruction. How to deal with a large amount of discrete data is not only one of the focuses and challenges in the area of LIDAR point cloud data processing, but also an important content in some other areas such as the DEM generation. While in some ways the storage, organization and management solutions of these massive points will affect the efficiency and accuracy in the following processing. In this paper a dynamical regular grid nets method will be introduced. This method will then be used in some airborne LIDAR filtering experiments of different areas. We will see the procedure and result of the point cloud data processing using this dynamic regular grid nets method. Accordingly, the effectiveness of this method will be proved.
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