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Error-aware construction and rendering of multi-scan panoramas from massive point clouds

机译:来自大规模点云的错误感知构造和多扫描Panoramas的渲染

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Obtaining 3D realistic models of urban scenes from accurate range data is nowadays an important research topic, with applications in a variety of fields ranging from Cultural Heritage and digital 3D archiving to monitoring of public works. Processing massive point clouds acquired from laser scanners involves a number of challenges, from data management to noise removal, model compression and interactive visualization and inspection. In this paper, we present a new methodology for the reconstruction of 3D scenes from massive point clouds coming from range lidar sensors. Our proposal includes a panorama-based compact reconstruction where colors and normals are estimated robustly through an error-aware algorithm that takes into account the variance of expected errors in depth measurements. Our representation supports efficient, GPU-based visualization with advanced lighting effects. We discuss the proposed algorithms in a practical application on urban and historical preservation, described by a massive point cloud of 3.5 billion points. We show that we can achieve compression rates higher than 97% with good visual quality during interactive inspections.
机译:从准确的范围数据获得城市场景的3D现实模型是一个重要的研究主题,其中各种田野的应用范围从文化遗产和数字3D归档到监测公共工程。处理从激光扫描仪获取的大量点云涉及许多挑战,从数据管理到噪声消除,模型压缩和交互式可视化和检查。在本文中,我们提出了一种新的方法,用于从范围激光雷达传感器的大规模点云重建3D场景。我们的提案包括基于全景的紧凑型重建,其中通过错误感知算法估计颜色和正常估计,该算法考虑了深度测量中预期误差的方差。我们的代表支持高效,基于GPU的可视化,具有先进的照明效果。我们在城市和历史保存的实际应用中讨论了所提出的算法,由35亿分的大量云描述。我们表明,在互动检查期间,我们可以实现高于97%的压缩率,良好的视觉质量。

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