학술논문

COMPRESSING UNSTRUCTURED MESH DATA USING SPLINE FITS, COMPRESSED SENSING, AND REGRESSION METHODS
Document Type
Conference
Source
2018 IEEE Global Conference on Signal and Information Processing (GlobalSIP) Signal and Information Processing (GlobalSIP), 2018 IEEE Global Conference on. :316-320 Nov, 2018
Subject
Signal Processing and Analysis
Image coding
Splines (mathematics)
Data models
Computational modeling
Compressed sensing
Kernel
Image reconstruction
compression
unstructured mesh data
spline fit
compressed sensing
regression
Language
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.