Interpolation revisited (2000)
| Venue: | IEEE Transactions on Medical Imaging |
| Citations: | 80 - 18 self |
BibTeX
@ARTICLE{Blu00interpolationrevisited,
author = {Thierry Blu and Michael Unser},
title = {Interpolation revisited},
journal = {IEEE Transactions on Medical Imaging},
year = {2000},
volume = {19},
pages = {739--758}
}
Years of Citing Articles
OpenURL
Abstract
Abstract—Based on the theory of approximation, this paper presents a unified analysis of interpolation and resampling techniques. An important issue is the choice of adequate basis functions. We show that, contrary to the common belief, those that perform best are not interpolating. By opposition to traditional interpolation, we call their use generalized interpolation; they involve a prefiltering step when correctly applied. We explain why the approximation order inherent in any basis function is important to limit interpolation artifacts. The decomposition theorem states that any basis function endowed with approximation order can be expressed as the convolution of a B-spline of the same order with another function that has none. This motivates the use of splines and spline-based functions as a tunable way to keep artifacts in check without any significant cost penalty. We discuss implementation and performance issues, and we provide experimental evidence to support our claims. Index Terms—Approximation constant, approximation order, B-splines, Fourier error kernel, maximal order and minimal support (Moms), piecewise-polynomials. I.







