Survey: Interpolation Methods in Medical Image Processing (1999)
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| Venue: | IEEE Transactions on Medical Imaging |
| Citations: | 71 - 1 self |
BibTeX
@ARTICLE{Lehmann99survey:interpolation,
author = {Thomas M. Lehmann and Claudia Gönner and Klaus Spitzer},
title = {Survey: Interpolation Methods in Medical Image Processing},
journal = {IEEE Transactions on Medical Imaging},
year = {1999},
volume = {18},
pages = {1049--1075}
}
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Abstract
Abstract — Image interpolation techniques often are required in medical imaging for image generation (e.g., discrete back projection for inverse Radon transform) and processing such as compression or resampling. Since the ideal interpolation function spatially is unlimited, several interpolation kernels of finite size have been introduced. This paper compares 1) truncated and windowed sinc; 2) nearest neighbor; 3) linear; 4) quadratic; 5) cubic B-spline; 6) cubic; g) Lagrange; and 7) Gaussian interpolation and approximation techniques with kernel sizes from 1 2 1upto 8 2 8. The comparison is done by: 1) spatial and Fourier analyses; 2) computational complexity as well as runtime evaluations; and 3) qualitative and quantitative interpolation error determinations for particular interpolation tasks which were taken from common situations in medical image processing. For local and Fourier analyses, a standardized notation is introduced







