Title :
Quasi-Interpolating Spline Models for Hexagonally-Sampled Data
Author :
Condat, Laurent ; Van De Ville, Dimitri
Author_Institution :
Nat. Res. Center for Environ. & Health, Munich
fDate :
5/1/2007 12:00:00 AM
Abstract :
The reconstruction of a continuous-domain representation from sampled data is an essential element of many image processing tasks, in particular, image resampling. Until today, most image data have been available on Cartesian lattices, despite the many theoretical advantages of hexagonal sampling. In this paper, we propose new reconstruction methods for hexagonally sampled data that use the intrinsically 2-D nature of the lattice, and that at the same time remain practical and efficient. To that aim, we deploy box-spline and hex-spline models, which are notably well adapted to hexagonal lattices. We also rely on the quasi-interpolation paradigm to design compelling prefilters; that is, the optimal filter for a prescribed design is found using recent results from approximation theory. The feasibility and efficiency of the proposed methods are illustrated and compared for a hexagonal to Cartesian grid conversion problem
Keywords :
approximation theory; filtering theory; image reconstruction; image representation; image sampling; interpolation; splines (mathematics); Cartesian lattices; approximation theory; box-spline model; continuous-domain data representation; hex-spline model; hexagonally-sampled data; image processing; image resampling; prefilters; quasi-interpolating spline models; reconstruction methods; Biomedical imaging; Filtering theory; Image processing; Image reconstruction; Image sampling; Interpolation; Lattices; Reconstruction algorithms; Signal processing algorithms; Spline; Approximation theory; box-splines; hex-splines; hexagonal lattices; interpolation; linear shift invariant signal spaces; quasi-interpolation;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2007.891808