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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >BUILDING FEATURES RECOGNITION FROM UNCERTAIN 3D LIDAR POINT CLOUDS: A SEMANTIC APPROACH
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BUILDING FEATURES RECOGNITION FROM UNCERTAIN 3D LIDAR POINT CLOUDS: A SEMANTIC APPROACH

机译:从不确定的3D LIDAR点云构建功能识别:语义方法

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摘要

LiDAR technology allows rapid observation of high-resolution and precise 3D point clouds for diverse applications in urban and natural areas. However, uneven density and incomplete point clouds make LiDAR data processing more challenging for the extraction of semantic information on objects and their components. In this paper, we propose a knowledge based semantic reasoning solution for the recognition of building components (e.g. roofs) from segmentation results in the presence of uncertainties in LiDAR point clouds. The proposed solution uses a semantic reasoning approach as well as a similarity evaluation process for object recognition. We apply the proposed method to recognize buildings’ roof styles from a point cloud with uncertainty as a case study.
机译:LIDAR技术允许快速观察高分辨率和精确的3D点云,以便在城市和自然区域进行各种应用。然而,不均匀的密度和不完整的点云使LIDAR数据处理更具挑战性,以提取关于物体及其组件的语义信息。在本文中,我们提出了一种基于知识的语义推理解决方案,用于识别来自分段的建筑部件(例如屋顶)导致LIDAR点云的不确定性的存在。该解决方案使用语义推理方法以及对象识别的相似性评估过程。我们应用所提出的方法来识别从点云中识别建筑物的屋顶样式,以不确定性作为案例研究。

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