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HexaShrink, an exact scalable framework for hexahedral meshes with attributes and discontinuities: multiresolution rendering and storage of geoscience models

机译:Hexashrink,一个具有属性和不连续性的六面对面网格的精确可扩展的框架:多分辨率渲染和地球科学模型的存储

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With huge data acquisition progresses realized in the past decades and acquisition systems now able to produce high resolution grids and point clouds, the digitization of physical terrains becomes increasingly more precise. Such extreme quantities of generated and modeled data greatly impact computational performances on many levels of high-performance computing (HPC): storage media, memory requirements, transfer capability, and finally simulation interactivity, necessary to exploit this instance of big data. Efficient representations and storage are thus becoming enabling technologies in HPC experimental and simulation science. We propose HexaShrink, an original decomposition scheme for structured hexahedral volume meshes. The latter are used for instance in biomedical engineering, materials science, or geosciences. HexaShrink provides a comprehensive framework allowing efficient mesh visualization and storage. Its exactly reversible multiresolution decomposition yields a hierarchy of meshes of increasing levels of details, in terms of either geometry, continuous or categorical properties of cells. Starting with an overview of volume meshes compression techniques, our contribution blends coherently different multiresolution wavelet schemes in different dimensions. It results in a global framework preserving discontinuities (faults) across scales, implemented as a fully reversible upscaling at different resolutions. Experimental results are provided on meshes of varying size and complexity. They emphasize the consistency of the proposed representation, in terms of visualization, attribute downsampling and distribution at different resolutions. Finally, HexaShrink yields gains in storage space when combined to lossless compression techniques.
机译:由于巨大的数据采集进展,在过去的几十年中实现了现在能够产生高分辨率网格和点云的收购系统,物理地形的数字化变得越来越精确。这种极端数量的生成和建模数据极大地影响了许多级别的高性能计算(HPC)的计算性能:存储介质,存储器要求,传输能力和最终模拟交互性,所以要利用这种大数据实例所必需的。因此,高效的表示和存储是HPC实验和模拟科学中的能够实现技术。我们提出了六曲调,一个原始的分解方案,用于结构化六面体积网格。后者用于生物医学工程,材料科学或地质。 HexashRink提供了一个综合框架,允许高效的网格可视化和存储。其恰好可逆的多分辨率分解在细胞的几何形状,连续或分类特性方面产生了增加的细节水平的层次。从卷网格压缩技术的概述开始,我们的贡献在不同尺寸中共混合不同的多分辨率小波方案。它导致全球框架保留尺度的不连续性(断层),实现为在不同分辨率的完全可逆上升。实验结果提供了不同尺寸和复杂性的网格。他们强调了所提出的代表的一致性,即在不同分辨率下的可视化,属性下采样和分布方面。最后,在组合到无损压缩技术时,六曲调在存储空间中收益增加。

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