An Efficient Projection-Based Next-best-view Planning Framework for Reconstruction of Unknown Objects

Zhizhou Jia, Shaohui Zhang, Qun Hao
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Abstract

Efficiently and completely capturing the three-dimensional data of an object is a fundamental problem in industrial and robotic applications. The task of next-best-view (NBV) planning is to infer the pose of the next viewpoint based on the current data, and gradually realize the complete three-dimensional reconstruction. Many existing algorithms, however, suffer a large computational burden due to the use of ray-casting. To address this, this paper proposes a projection-based NBV planning framework. It can select the next best view at an extremely fast speed while ensuring the complete scanning of the object. Specifically, this framework refits different types of voxel clusters into ellipsoids based on the voxel structure.Then, the next best view is selected from the candidate views using a projection-based viewpoint quality evaluation function in conjunction with a global partitioning strategy. This process replaces the ray-casting in voxel structures, significantly improving the computational efficiency. Comparative experiments with other algorithms in a simulation environment show that the framework proposed in this paper can achieve 10 times efficiency improvement on the basis of capturing roughly the same coverage. The real-world experimental results also prove the efficiency and feasibility of the framework.
基于投影的高效下一最佳视角规划框架,用于重建未知物体
高效、完整地捕捉物体的三维数据是工业和机器人应用中的一个基本问题。下一个最佳视点(NBV)规划的任务是根据当前数据推断下一个视点的姿态,并逐步实现完整的三维重建。然而,现有的许多算法由于使用了光线投射技术,计算量很大。针对这一问题,本文提出了基于投影的 NBV 规划框架。具体来说,该框架根据体素结构将不同类型的体素簇重构为ellipsoids,然后使用基于投影的视点质量评估功能,结合全局分割策略,从候选视点中选出下一个最佳视点。这一过程取代了体素结构中的光线投射,大大提高了计算效率。在模拟环境中与其他算法的对比实验表明,本文提出的框架可以在捕捉大致相同的覆盖范围的基础上实现 10 倍的效率提升。真实世界的实验结果也证明了该框架的高效性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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