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Fast Resampling of Three-Dimensional Point Clouds via Graphs

机译:通过图形对三维点云进行快速重采样

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摘要

To reduce the cost of storing, processing, and visualizing a large-scale point cloud, we propose a randomized resampling strategy that selects a representative subset of points while preserving application-dependent features. The strategy is based on graphs, which can represent underlying surfaces and lend themselves well to efficient computation. We use a general feature-extraction operator to represent application-dependent features and propose a general reconstruction error to evaluate the quality of resampling; by minimizing the error, we obtain a general form of optimal resampling distribution. The proposed resampling distribution is guaranteed to be shift-, rotation- and scale-invariant in the three-dimensional space. We then specify the feature-extraction operator to be a graph filter and study specific resampling strategies based on all-pass, low-pass, high-pass graph filtering and graph filter banks. We validate the proposed methods on three applications: Large-scale visualization, accurate registration, and robust shape modeling demonstrating the effectiveness and efficiency of the proposed resampling methods.
机译:为了降低存储、处理和可视化大规模点云的成本,我们提出了一种随机重采样策略,该策略在保留与应用程序相关的特征的同时选择具有代表性的点子集。该策略基于图形,可以表示下垫面,并且非常适合高效计算。我们使用通用特征提取算子来表示与应用相关的特征,并提出一个通用的重建误差来评估重采样的质量;通过最小化误差,我们获得了最优重采样分布的一般形式。所提出的重采样分布保证在三维空间中是移位、旋转和尺度不变的。然后,我们将特征提取算子指定为图滤波器,并研究基于全通、低通、高通图滤波和图滤波器库的特定重采样策略。我们在三个应用上验证了所提出的方法:大规模可视化、准确配准和鲁棒形状建模,证明了所提出的重采样方法的有效性和效率。

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