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Deep 3D Segmentation and Classification of Point Clouds for Identifying AusRAP Attributes

机译:用于识别AUSRAP属性的点云的深度3D分割和分类

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Identifying Australian Road Assessment Programme (AusRAP) attributes, such as speed signs, trees and electric poles, is the focus of road safety management. The major challenges are accurately segmenting and classifying AusRAP attributes. Researchers have focused on sematic segmentation and object classification to address the challenges mostly in 2D image setting, and few of them have recently extended techniques from 2D to 3D setting. However, most of them are designed for general objects and small scenes rather than large roadside scenes, and their performance on identifying AusRAP attributes, such as poles and trees, is limited. In this paper, we investigate segmentation and classification in roadside 3D setting, and propose an automatic 3D segmentation and classification framework for identifying AusRAP attributes. The proposed framework is able to directly take large raw 3D point cloud data collected by Light Detection and Ranging technique as input. We evaluate the proposed framework on real-world point cloud data provided by the Queensland Department of Transport and Main Roads.
机译:识别澳大利亚公路评估计划(AUSRAP)属性,例如速度标志,树木和电杆,是道路安全管理的重点。主要挑战是准确分割和分类AUSRAP属性。研究人员专注于神出的分割和对象分类,以解决大多数在2D图像设置中的挑战,并且其中很少有最近从2D扩展到3D设置的技术。然而,其中大多数是为一般物体和小型场景而不是大型路边场景设计,它们在识别杆和树等瞄准AUSRAP属性时的性能是有限的。在本文中,我们在路边3D设置中调查分段和分类,并提出了一种用于识别AUSRAP属性的自动3D分段和分类框架。所提出的框架能够直接采取由光检测和测距技术收集的大型原始3D点云数据作为输入。我们评估昆士兰州运输部门提供的现实世界点云数据上提出的框架。

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