COMPRESSING UNSTRUCTURED MESH DATA USING SPLINE FITS, COMPRESSED SENSING, AND REGRESSION METHODS

C. Kamath, Y. Fan
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引用次数: 2

Abstract

Compressing unstructured mesh data from computer simulations poses several challenges that are not encountered in the compression of images or videos. Since the spatial locations of the points are not on a regular grid, as in an image, it is difficult to identify near neighbors of a point whose values can be exploited for compression. In this paper, we investigate how three very different methods — spline fits, compressed sensing, and kernel regression — compare in terms of the reconstruction accuracy and reduction in data size when applied to a practical problem from a plasma physics simulation.
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使用样条拟合、压缩感知和回归方法压缩非结构化网格数据
压缩来自计算机模拟的非结构化网格数据带来了一些在压缩图像或视频时不会遇到的挑战。由于点的空间位置不像在图像中那样在规则网格上,因此很难识别可以利用其值进行压缩的点的近邻。在本文中,我们研究了三种非常不同的方法-样条拟合,压缩感知和核回归-在应用于等离子体物理模拟的实际问题时,如何在重建精度和减少数据大小方面进行比较。
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