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Void-and-Cluster Sampling of Large Scattered Data and Trajectories

机译:大分散数据和轨迹的空团聚采样

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摘要

We propose a data reduction technique for scattered data based on statistical sampling. Our void-and-cluster sampling technique finds a representative subset that is optimally distributed in the spatial domain with respect to the blue noise property. In addition, it can adapt to a given density function, which we use to sample regions of high complexity in the multivariate value domain more densely. Moreover, our sampling technique implicitly defines an ordering on the samples that enables progressive data loading and a continuous level-of-detail representation. We extend our technique to sample time-dependent trajectories, for example pathlines in a time interval, using an efficient and iterative approach. Furthermore, we introduce a local and continuous error measure to quantify how well a set of samples represents the original dataset. We apply this error measure during sampling to guide the number of samples that are taken. Finally, we use this error measure and other quantities to evaluate the quality, performance, and scalability of our algorithm.
机译:我们提出了一种基于统计抽样的分散数据的数据约简技术。我们的空集群采样技术找到了一个具有代表性的子集,该子集相对于蓝噪声特性在空间域中是最佳分布的。此外,它可以适应给定的密度函数,我们可以使用它更密集地对多元值域中的高复杂度区域进行采样。此外,我们的采样技术隐式定义了对样本的排序,以实现渐进式数据加载和连续的细节层次表示。我们使用高效且迭代的方法将技术扩展到对时间相关的轨迹进行采样,例如时间间隔中的路径。此外,我们引入了局部和连续误差度量,以量化一组样本代表原始数据集的程度。我们在采样过程中采用了这种误差度量,以指导所采样的数量。最后,我们使用此误差度量和其他数量来评估算法的质量,性能和可伸缩性。

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