A NEW COLOR DISTANCE MEASURE FORMULATED FROM THE COOPERATION OF THE EUCLIDEAN AND THE VECTOR ANGULAR DIFFERENCES FOR LIDAR POINT CLOUD SEGMENTATION

IF 3.1 Q2 ENGINEERING, GEOLOGICAL International Journal of Engineering and Geosciences Pub Date : 2020-09-19 DOI:10.26833/ijeg.709212
Ali Saglam, N. Baykan
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引用次数: 7

Abstract

Two important features of the points in the LiDAR point clouds are the spatial and the color features. The spatial feature is mostly used in the point cloud processing field due to its 3D informative and distinctive characteristic. The local geometric difference derived from the spatial features of the points is usually benefited by graph-based point cloud segmentation methods, because the geometric features of the local point groups are highly distinctive. In this paper, we use both the geometric and color differences of the adjacent local point groups at the impact rates 0.3, 0.5, and 0.7 and cooperate the Euclidean and the vector color differences within several averaging techniques for the color difference. The difference forms have been tested within a graph-based segmentation method on four point cloud segmentation datasets, two indoor and two outdoor, using their spatial and color information. The geometric mean as an averaging techniques increases the segmentation success for the all datasets except one outdoor when the color differences are used in the segmentation at the impact rate 0.3, while the harmonic mean increases the success for the all datasets the successes except the other outdoor at the same impact rate. According to the test results, the cooperating of the Euclidean and vector angular color difference measurements can considerable increase the segmentation success on the point clouds with color information in a high quality.
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将欧几里得和矢量角差相结合,提出了一种新的激光雷达点云分割颜色距离测度方法
激光雷达点云中点的两个重要特征是空间特征和颜色特征。空间特征以其三维信息量大、特征鲜明的特点,被广泛应用于点云处理领域。由于局部点群的几何特征具有很强的差异性,因此基于图的点云分割方法通常能从点的空间特征中提取出局部的几何差异。在本文中,我们在影响率为0.3、0.5和0.7时同时使用相邻局部点组的几何和色差,并在几种平均技术中配合欧几里得和矢量色差进行色差的计算。在四个点云分割数据集(两个室内和两个室外)上,使用它们的空间和颜色信息,在基于图的分割方法中测试了不同的形式。当以0.3的影响率使用色差进行分割时,几何平均作为一种平均技术增加了除一个室外的所有数据集的分割成功率,而谐波平均在相同的影响率下增加了除其他室外的所有数据集的成功率。实验结果表明,欧几里得色差测量与矢量角色差测量相结合,可以显著提高对含有高质量颜色信息的点云的分割成功率。
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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
12
审稿时长
30 weeks
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