首页> 外文OA文献 >AN IMPROVED AUTOMATIC POINTWISE SEMANTIC SEGMENTATION OF A 3D URBAN SCENE FROM MOBILE TERRESTRIAL AND AIRBORNE LIDAR POINT CLOUDS: A MACHINE LEARNING APPROACH
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AN IMPROVED AUTOMATIC POINTWISE SEMANTIC SEGMENTATION OF A 3D URBAN SCENE FROM MOBILE TERRESTRIAL AND AIRBORNE LIDAR POINT CLOUDS: A MACHINE LEARNING APPROACH

机译:从移动地面和机载激光器点云的3D城市场景的改进自动点球语义分割:机器学习方法

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摘要

Automatic semantic segmentation of point clouds observed in a 3D complex urban scene is a challenging issue. Semantic segmentation of urban scenes based on machine learning algorithm requires appropriate features to distinguish objects from mobile terrestrial and airborne LiDAR point clouds in point level. In this paper, we propose a pointwise semantic segmentation method based on our proposed features derived from Difference of Normal and the features “directional height above” that compare height difference between a given point and neighbors in eight directions in addition to the features based on normal estimation. Random forest classifier is chosen to classify points in mobile terrestrial and airborne LiDAR point clouds. The results obtained from our experiments show that the proposed features are effective for semantic segmentation of mobile terrestrial and airborne LiDAR point clouds, especially for vegetation, building and ground classes in an airborne LiDAR point clouds in urban areas.
机译:3D复杂城市场景中观察到的点云的自动语义分割是一个具有挑战性的问题。基于机器学习算法的城市场景的语义分割需要适当的特征,以区分来自移动地面和空气传播的LIDAR点云的对象。在本文中,我们提出了一种基于源自正常的差异和“方向高度”的差异的提出的特征的点语义分割方法,该特征在于除了基于普通的特征之外,在八个方向上比较给定点和邻居之间的高度差异估计。选择随机森林分类器,以对移动地面和空中激光乐队点云进行分类点。从我们的实验中获得的结果表明,该特征对于移动地面和空中激光乐队点云的语义分割是有效的,特别是对于城市地区的空中激光乐队云中的植被,建筑和地面课程。

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