首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EFFICIENT LOADING AND VISUALIZATION OF MASSIVE FEATURE-RICH POINT CLOUDS WITHOUT HIERARCHICAL ACCELERATION STRUCTURES
【24h】

EFFICIENT LOADING AND VISUALIZATION OF MASSIVE FEATURE-RICH POINT CLOUDS WITHOUT HIERARCHICAL ACCELERATION STRUCTURES

机译:没有分层加速结构的大规模功能丰富点云的高效装载和可视化

获取原文
           

摘要

Nowadays, point clouds are the standard product when capturing reality independent of scale and measurement technique. Especially, Dense Image Matching (DIM) and Laser Scanning (LS) are state of the art capturing methods for a great variety of applications producing detailed point clouds up to billions of points. In-depth analysis of such huge point clouds typically requires sophisticated spatial indexing structures to support potentially long-lasting automated non-interactive processing tasks like feature extraction, semantic labelling, surface generation, and the like. Nevertheless, a visual inspection of the point data is often necessary to obtain an impression of the scene, roughly check for completeness, quality, and outlier rates of the captured data in advance. Also intermediate processing results, containing additional per-point computed attributes, may require visual analyses to draw conclusions or to parameterize further processing. Over the last decades a variety of commercial, free, and open source viewers have been developed that can visualise huge point clouds and colorize them based on available attributes. However, they have either a poor loading and navigation performance, visualize only a subset of the points, or require the creation of spatial indexing structures in advance. In this paper, we evaluate a progressive method that is capable of rendering any point cloud that fits in GPU memory in real time without the need of time consuming hierarchical acceleration structure generation. In combination with our multi-threaded LAS and LAZ loaders, we achieve load performance of up to 20 million points per second, display points already while loading, support flexible switching between different attributes, and rendering up to one billion points with visually appealing navigation behaviour. Furthermore, loading times of different data sets for different open source and commercial software packages are analysed.
机译:如今,点云是捕获现实独立于比例和测量技术时的标准产品。特别地,致密图像匹配(DIM)和激光扫描(LS)是艺术状态的捕获方法,用于多种应用,其产生的详细点云长达数十亿个点。对这种巨大云的深度分析通常需要复杂的空间索引结构,以支持潜在的长持续自动化非交互式处理任务,如特征提取,语义标记,表面生成等。然而,目前检查点数据通常需要获得场景的印象,大致检查提前捕获数据的完整性,质量和异常率。此外,包含额外的每点计算属性的中间处理结果可能需要视觉分析来得出结论或参数化进一步处理。在过去的几十年中,已经开发出各种商业,免费和开源观众,可以根据可用属性可视化巨大的点云并着色它们。然而,它们具有较差的加载和导航性能,仅可视化点的子集,或者需要提前创建空间索引结构。在本文中,我们评估了一种能够在实时渲染任何点云的渐进方法,而不需要耗时的分层加速结构生成。结合我们的多线程LAS和LAZ装载机,我们实现了每秒高达2000万分的负载性能,在加载时已经显示点数,支持不同的属性之间的灵活切换,并在视觉上吸引人的导航行为之间渲染到10亿点。 。此外,分析了用于不同开源和商业软件包的不同数据集的加载时间。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号