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Optimal regular volume sampling

机译:最佳常规卷采样

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The classification of volumetric data sets as well as their rendering algorithms are typically based on the representation of the underlying grid. Grid structures based on a Cartesian lattice are the de-facto standard for regular representations of volumetric data. In this paper we introduce a more general concept of regular grids for the representation of volumetric data. We demonstrate that a specific type of regular lattice - the so-called body-centered cubic - is able to represent the same data set as a Cartesian grid to the same accuracy but with 29.3% fewer samples. This speeds up traditional volume rendering algorithms by the same ratio, which we demonstrate by adopting a splatting implementation for these new lattices. We investigate different filtering methods required for computing the normals on this lattice. The lattice representation results also in lossless compression ratios that are better than previously reported. Although other regular grid structures achieve the same sample efficiency, the body-centered cubic is particularly easy to use. The only assumption necessary is that the underlying volume is isotropic and band-limited - an assumption that is valid for most practical data sets.
机译:体积数据集以及其渲染算法的分类通常基于底层网格的表示。基于笛卡尔晶格的网格结构是VolumeTric数据常规表示的De-Facto标准。在本文中,我们介绍了一个更一般的常规网格概念,用于容量数据的表示。我们证明了一种特定类型的常规格子 - 所谓的身体中心的立方体 - 能够将与笛卡尔电网相同的数据相同的数据,以相同的准确性,但样品较少的29.3%。这通过相同的比率来加速传统的体积渲染算法,我们通过采用这些新格子的分裂实现来展示。我们调查计算该晶格上的正规所需的不同过滤方法。晶格表示也在损坏的压缩比率比以前报道更好。虽然其他常规网格结构达到相同的样品效率,但以体为中心的立方体特别易于使用。所必需的唯一假设是底层体积是各向同性的和带限制的 - 一个对大多数实用数据集有效的假设。

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