Title of article :
Fast Anisotropic Smoothing of Multi-Valued Images using
Curvature-Preserving PDE’s
Author/Authors :
DAVID TSCHUMPERL´E، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
We are interested in PDE’s (Partial Differential Equations) in order to smooth multi-valued images in
an anisotropic manner. Starting from a review of existing anisotropic regularization schemes based on diffusion
PDE’s, we point out the pros and cons of the different equations proposed in the literature. Then, we introduce a
new tensor-driven PDE, regularizing images while taking the curvatures of specific integral curves into account.
We show that this constraint is particularly well suited for the preservation of thin structures in an image restoration
process. A direct link is made between our proposed equation and a continuous formulation of the LIC’s (Line
Integral Convolutions by Cabral and Leedom (1993). It leads to the design of a very fast and stable algorithm
that implements our regularization method, by successive integrations of pixel values along curved integral lines.
Besides, the scheme numerically performs with a sub-pixel accuracy and preserves then thin image structures
better than classical finite-differences discretizations. Finally, we illustrate the efficiency of our generic curvaturepreserving
approach - in terms of speed and visual quality - with different comparisons and various applications
requiring image smoothing : color images denoising, inpainting and image resizing by nonlinear interpolation
Keywords :
anisotropic smoothing , data regularization , diffusion PDE’s , tensor-valuedgeometry , nonlinear interpolation , Inpainting , multi-valued images , Denoising
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION