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RELEVANCE-DRIVEN ACQUISITION AND RAPID ON-SITE ANALYSIS OF 3D GEOSPATIAL DATA

机译:相关性驱动的3D地理空间数据的快速现场分析

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One central problem in geospatial applications using 3D models is the tradeoff between detail and acquisition cost during acquisition, as well as processing speed during use. Commonly used laser-scanning technology can be used to record spatial data in various levels of detail. Much detail, even on a small,scale, requires the complete scan to be conducted at high resolution and leads to long acquisition time, as well as a great amount of data and complex processing. Therefore, we propose a new scheme for the generation of geospatial 3D models that is driven by relevance rather than data. As part of that scheme we present a novel acquisition and analysis workflow, as well as supporting data-models. The workflow includes on-site data evaluation (e.g. quality of the scan) and presentation (e.g. visualization of the quality), which demands fast data processing. Thus, we employ high performance graphics cards (GPGPU) to effectively process and analyze large volumes of LIDAR data. In particular we present a density calculation based on k-nearest-neighbor determination using OpenCL. The presented GPGPU-accelerated workflow enables a fast data acquisition with highly detailed relevant objects and minimal storage requirements.
机译:使用3D模型的地理空间应用中的一个核心问题是在使用期间细节和采集成本之间的权衡,以及在使用过程中的处理速度。常用的激光扫描技术可用于在各种细节中记录空间数据。详细介绍,即使是小规模,也需要在高分辨率下进行完整的扫描,并导致长时间的采集时间,以及大量数据和复杂的处理。因此,我们提出了一种新的方案,用于生成由相关性而不是数据驱动的地理空间3D模型。作为该方案的一部分,我们提出了一种新颖的采集和分析工作流程,以及支持数据模型。工作流程包括现场数据评估(例如扫描的质量)和演示(例如,质量的可视化),这需要快速数据处理。因此,我们使用高性能显卡(GPGPU)来有效地处理和分析大量的LIDAR数据。特别地,我们使用OpenCL基于K到最近邻确定的密度计算。所呈现的GPGPU加速工作流程使快速数据采集能够具有高度详细的相关对象和最小的存储要求。

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