Title of article
Dual Norms and Image Decomposition Models
Author/Authors
JEAN-FRANC¸ OIS AUJOL، نويسنده , , ANTONIN CHAMBOLLE، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
20
From page
85
To page
104
Abstract
Following a recent work by Y. Meyer, decomposition models into a geometrical component and a
textured component have recently been proposed in image processing. In such approaches, negative Sobolev norms
have seemed to be useful to modelize oscillating patterns. In this paper, we compare the properties of various norms
that are dual of Sobolev or Besov norms.We then propose a decomposition model which splits an image into three
components: a first one containing the structure of the image, a second one the texture of the image, and a third
one the noise. Our decomposition model relies on the use of three different semi-norms: the total variation for the
geometrical component, a negative Sobolev norm for the texture, and a negative Besov norm for the noise. We
illustrate our study with numerical examples.
Keywords
total variation minimization , BV , Texture , noise , negative Sobolev spaces , negative Besov spaces , image decomposition
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Serial Year
2005
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Record number
828128
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