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New discretization method applied to NBV problem: Semioctree

机译:适用于NBV问题的新离散化方法:Semioctree

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摘要

This paper presents a discretization methodology applied to the NBV (Next Best View) problem, which consists of determining the heuristical best position of the next scan. This new methodology is a hybrid process between a homogenous voxelization and an octree structure that preserves the advantages of both methods. An octree structure is not directly applicable to the NBV problem: as the point cloud grows with every successive scanning, the limits and position of the discretization, octree structure must coincide, in order to transfer the information from one scan to the next. This problem is solved by applying a first coarse voxelization, followed by the division of each voxel in an octree structure. In addition, a previous methodology for solving the NBV problem has been adapted to make use of this novel approach. Results show that the new method is three times faster than the homogenous voxelization for a maximum resolution of 0.2m. For this target resolution of 0.2m, the number of voxels/octants in the discretization is reduced approximately by a 400%, from 35.360 to 8.937 for the study case presented.
机译:本文介绍了一种离散化方法,该方法适用于NBV(下一最佳视图)问题,该方法包括确定下一扫描的启发式最佳位置。这种新方法是在均质体素化和八叉树结构之间进行混合的过程,保留了这两种方法的优点。八叉树结构不直接适用于NBV问题:随着点云随着每次连续扫描而增长,离散化的界限和位置,八叉树结构必须重合,以便将信息从一次扫描转移到下一次扫描。通过应用第一个粗体素化,然后在八叉树结构中划分每个体素,可以解决此问题。另外,已经解决了解决NBV问题的先前方法,以利用这种新颖的方法。结果表明,新方法比均匀体素化快三倍,最大分辨率为0.2m。对于0.2m的目标分辨率,离散化中的体素/八分位数数量大约减少了400%,从研究的案例中的35.360减少到8.937。

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