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High-Precision Plane Detection Method for Rock-Mass Point Clouds Based on Supervoxel

机译:基于超氧化件的岩质质量云高精度平面检测方法

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摘要

In respect of rock-mass engineering, the detection of planar structures from the rock-mass point clouds plays a crucial role in the construction of a lightweight numerical model, while the establishment of high-quality models relies on the accurate results of surface analysis. However, the existing techniques are barely capable to segment the rock mass thoroughly, which is attributed to the cluttered and unpredictable surface structures of the rock mass. This paper proposes a high-precision plane detection approach for 3D rock-mass point clouds, which is effective in dealing with the complex surface structures, thus achieving a high level of detail in detection. Firstly, the input point cloud is fast segmented to voxels using spatial grids, while the local coplanarity test and the edge information calculation are performed to extract the major segments of planes. Secondly, to preserve as much detail as possible, supervoxel segmentation instead of traditional region growing is conducted to deal with scattered points. Finally, a patch-based region growing strategy applicable to rock mass is developed, while the completed planes are obtained by merging supervoxel patches. In this paper, an artificial icosahedron point cloud and four rock-mass point clouds are applied to validate the performance of the proposed method. As indicated by the experimental results, the proposed method can make high-precision plane detection achievable for rock-mass point clouds while ensuring high recall rate. Furthermore, the results of both qualitative and quantitative analyses evidence the superior performance of our algorithm.
机译:关于岩体群体,从岩石质量点云的平面结构的检测在轻量级数值模型的构建中起着至关重要的作用,而建立高质量模型依赖于表面分析的准确结果。然而,现有技术几乎没有能力彻底地分割岩体,这归因于岩体的杂乱和不可预测的表面结构。本文提出了一种用于3D岩质质量点云的高精度平面检测方法,其在处理复杂的表面结构方面是有效的,从而在检测中实现高水平的细节。首先,使用空间网格将输入点云快速分割给体素,而局部共面对局部的共面测试和边缘信息计算以提取平面的主要段。其次,为了保持尽可能多的细节,对超级区分割而不是传统地区生长,以处理分散点。最后,开发了适用于岩体的基于贴片的区域生长策略,而完成的平面是通过合并超级环饼贴剂获得的。在本文中,应用了人工ICOSAHEDRON点云和四个摇滚质量云以验证所提出的方法的性能。如实验结果所示,所提出的方法可以使岩质质量点云可实现高精度平面检测,同时确保高召回速率。此外,定性和定量分析的结果证据是我们算法的卓越性能。

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