首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >SigVox - A 3D feature matching algorithm for automatic street object recognition in mobile laser scanning point clouds
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SigVox - A 3D feature matching algorithm for automatic street object recognition in mobile laser scanning point clouds

机译:SigVox-用于移动激光扫描点云中自动街道目标识别的3D特征匹配算法

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Urban road environments contain a variety of objects including different types of lamp poles and traffic signs. Its monitoring is traditionally conducted by visual inspection, which is time consuming and expensive. Mobile laser scanning (MLS) systems sample the road environment efficiently by acquiring large and accurate point clouds. This work proposes a methodology for urban road object recognition from MLS point clouds. The proposed method uses, for the first time, shape descriptors of complete objects to match repetitive objects in large point clouds. To do so, a novel 3D multi-scale shape descriptor is introduced, that is embedded in a workflow that efficiently and automatically identifies different types of lamp poles and traffic signs. The workflow starts by tiling the raw point clouds along the scanning trajectory and by identifying non-ground points. After voxelization of the non-ground points, connected voxels are clustered to form candidate objects. For automatic recognition of lamp poles and street signs, a 3D significant eigenvector based shape descriptor using voxels (SigVox) is introduced. The 3D SigVox descriptor is constructed by first subdividing the points with an octree into several levels. Next, significant eigenvectors of the points in each voxel are determined by principal component analysis (PCA) and mapped onto the appropriate triangle of a sphere approximating icosahedron. This step is repeated for different scales. By determining the similarity of 3D SigVox descriptors between candidate point clusters and training objects, street furniture is automatically identified. The feasibility and quality of the proposed method is verified on two point clouds obtained in opposite direction of a stretch of road of 4 km. 6 types of lamp pole and 4 types of road sign were selected as objects of interest. Ground truth validation showed that the overall accuracy of the similar to 170 automatically recognized objects is approximately 95%. The results demonstrate that the proposed method is able to recognize street furniture in a practical scenario. Remaining difficult cases are touching objects, like a lamp pole close to a tree. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:城市道路环境包含各种物体,包括不同类型的灯杆和交通标志。传统上,其监视是通过目视检查进行的,这既费时又昂贵。移动激光扫描(MLS)系统通过获取大型且准确的点云来有效采样道路环境。这项工作提出了一种从MLS点云进行城市道路目标识别的方法。所提出的方法首次使用完整对象的形状描述符来匹配大点云中的重复对象。为此,引入了一种新颖的3D多尺度形状描述符,该描述符嵌入工作流中,可以高效,自动地识别不同类型的灯杆和交通标志。工作流程从沿扫描轨迹平铺原始点云并识别非地面点开始。在对非地面点进行体素化之后,将连接的体素聚类以形成候选对象。为了自动识别灯杆和路牌,引入了使用三维像素(SigVox)的基于3D有效特征向量的形状描述符。通过首先用八叉树将点细分为几个级别来构造3D SigVox描述符。接下来,通过主成分分析(PCA)确定每个体素中各点的有效特征向量,并将其映射到近似二十面体的球体的适当三角形上。对不同的比例重复此步骤。通过确定候选点群集和训练对象之间3D SigVox描述符的相似性,可以自动识别街道家具。该方法的可行性和质量在沿4 km道路的相反方向获得的两个点云上得到了验证。选择了6种灯杆和4种路标作为关注对象。地面真伪验证显示,与170个自动识别的对象相似的整体准确性约为95%。结果表明,所提出的方法能够在实际情况下识别街道家具。剩下的困难情况是触摸物体,例如靠近树木的灯杆。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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