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首页> 外文期刊>Machine Vision and Applications >Urban 3D segmentation and modelling from street view images and LiDAR point clouds
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Urban 3D segmentation and modelling from street view images and LiDAR point clouds

机译:从街景图像和LiDAR点云进行城市3D分割和建模

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摘要

3D urban maps with semantic labels and metric information are not only essential for the next generation robots such autonomous vehicles and city drones, but also help to visualize and augment local environment in mobile user applications. The machine vision challenge is to generate accurate urban maps from existing data with minimal manual annotation. In this work, we propose a novel methodology that takes GPS registered LiDAR (Light Detection And Ranging) point clouds and street view images as inputs and creates semantic labels for the 3D points clouds using a hybrid of rule-based parsing and learning-based labelling that combine point cloud and photometric features. The rule-based parsing boosts segmentation of simple and large structures such as street surfaces and building facades that span almost 75% of the point cloud data. For more complex structures, such as cars, trees and pedestrians, we adopt boosted decision trees that exploit both structure (LiDAR) and photometric (street view) features. We provide qualitative examples of our methodology in 3D visualization where we construct parametric graphical models from labelled data and in 2D image segmentation where 3D labels are back projected to the street view images. In quantitative evaluation we report classification accuracy and computing times and compare results to competing methods with three popular databases: NAVTEQ True, Paris-Rue-Madame and TLS (terrestrial laser scanned) Velodyne.
机译:具有语义标签和度量信息的3D城市地图不仅对于下一代机器人(如自动驾驶汽车和城市无人机)必不可少,而且还有助于可视化和增强移动用户应用程序中的本地环境。机器视觉的挑战是要以最少的人工注释从现有数据生成准确的城市地图。在这项工作中,我们提出了一种新颖的方法,该方法将GPS注册的LiDAR(光检测和测距)点云和街景图像作为输入,并使用基于规则的解析和基于学习的标签的混合为3D点云创建语义标签。结合了点云和光度学功能。基于规则的解析可促进对简单和大型结构(例如,街道表面和建筑物立面)的分割,这些结构几乎覆盖了点云数据的75%。对于汽车,树木和行人等较复杂的结构,我们采用增强型决策树,该决策树同时利用结构(LiDAR)和光度学(街景)功能。我们提供3D可视化方法的定性示例,在3D可视化中,我们从标记的数据构建参数化图形模型;在2D图像分割中,将3D标签反向投影到街景图像。在定量评估中,我们报告分类的准确性和计算时间,并将结果与​​三种流行的数据库(NAVTEQ True,Paris-Rue-Madame和TLS(地面激光扫描)Velodyne)的竞争方法进行比较。

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