首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >GENERATION OF GROUND TRUTH DATASETS FOR THE ANALYSIS OF 3D POINT CLOUDS IN URBAN SCENES ACQUIRED VIA DIFFERENT SENSORS
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GENERATION OF GROUND TRUTH DATASETS FOR THE ANALYSIS OF 3D POINT CLOUDS IN URBAN SCENES ACQUIRED VIA DIFFERENT SENSORS

机译:通过不同的传感器生成的地面真实数据集,用于分析城市场景中的3D点云

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In this work, we report a novel way of generating ground truth dataset for analyzing point cloud from different sensors and the validation of algorithms. Instead of directly labeling large amount of 3D points requiring time consuming manual work, a multi-resolution 3D voxel grid for the testing site is generated. Then, with the help of a set of basic labeled points from the reference dataset, we can generate a 3D labeled space of the entire testing site with different resolutions. Specifically, an octree-based voxel structure is applied to voxelize the annotated reference point cloud, by which all the points are organized by 3D grids of multi-resolutions. When automatically annotating the new testing point clouds, a voting based approach is adopted to the labeled points within multiple resolution voxels, in order to assign a semantic label to the 3D space represented by the voxel. Lastly, robust line- and plane-based fast registration methods are developed for aligning point clouds obtained via various sensors. Benefiting from the labeled 3D spatial information, we can easily create new annotated 3D point clouds of different sensors of the same scene directly by considering the corresponding labels of 3D space the points located, which would be convenient for the validation and evaluation of algorithms related to point cloud interpretation and semantic segmentation.
机译:在这项工作中,我们报告了一种生成地面真实数据集的新颖方法,该数据用于分析来自不同传感器的点云以及算法的验证。无需直接标记大量的3D点,而这需要费时的手动工作,而是生成用于测试站点的多分辨率3D体素网格。然后,借助参考数据集中的一组基本标记点,我们可以生成具有不同分辨率的整个测试站点的3D标记空间。具体地,基于八叉树的体素结构被应用于体素化带注释的参考点云,通过该参考点云,所有点都由具有多分辨率的3D网格进行组织。当自动注释新的测试点云时,对多分辨率体素内的标记点采用基于投票的方法,以便将语义标签分配给由体素表示的3D空间。最后,开发了鲁棒的基于线和面的快速配准方法,以对准通过各种传感器获得的点云。得益于标记的3D空间信息,我们可以通过考虑所定位点的3D空间对应标签,轻松地直接创建同一场景的不同传感器的新带注释的3D点云,这将有助于验证和评估与点云解释和语义分割。

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