Title :
Diffusion PDEs on vector-valued images
Author :
Tschumperlé, David ; Deriche, Rachid
fDate :
9/1/2002 12:00:00 AM
Abstract :
In this article, we propose a local and geometric point of view of vector image filtering using diffusion PDEs. It allows us to analyze proposed methods of vector data regularization, as well as propose a new vector PDE, well adapted for image restoration. This equation, whose key feature is the use of a local vector geometry, combines the advantages of diffusion PDEs for noise removing but also uses vector shock filters to enhance blurred edges. The extension to norm constrained vector fields can be the start for other well-known constrained problems, as optical flow computation, orientation analysis, and tensor image restoration.
Keywords :
digital filters; edge detection; image colour analysis; image enhancement; image restoration; noise; partial differential equations; blurred edges enhancement; constrained problems; diffusion PDEs; geometric point of view; image restoration; local point of view; local vector geometry; noise removal; norm constrained vector fields; optical flow computation; orientation analysis; tensor image restoration; vector PDE; vector data regularization; vector image filtering; vector shock filters; Electric shock; Equations; Filtering; Geometrical optics; Image analysis; Image motion analysis; Image restoration; Optical computing; Optical filters; Optical noise;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2002.1028349