Adaptive structure tensors and their applications

Publikation: Bidrag til tidsskriftKonferenceartikelForskningfagfællebedømt

  • Thomas Brox
  • Rein Van Den Boomgaard
  • Lauze, Francois Bernard
  • Joost Van De Weijer
  • Joachim Weickert
  • Pavel Mrázek
  • Pierre Kornprobst

The structure tensor, also known as second moment matrix or Förstner interest operator, is a very popular tool in image processing. Its purpose is the estimation of orientation and the local analysis of structure in general. It is based on the integration of data from a local neighborhood. Normally, this neighborhood is defined by a Gaussian window function and the structure tensor is computed by the weighted sum within this window. Some recently proposed methods, however, adapt the computation of the structure tensor to the image data. There are several ways how to do that. This chapter wants to give an overview of the different approaches, whereas the focus lies on the methods based on robust statistics and nonlinear diffusion. Furthermore, the data-adaptive structure tensors are evaluated in some applications. Here the main focus lies on optic flow estimation, but also texture analysis and corner detection are considered.

OriginalsprogEngelsk
TidsskriftMathematics and Visualization
Udgave nummer200709
Sider (fra-til)17-47
Antal sider31
ISSN1612-3786
DOI
StatusUdgivet - 2006
BegivenhedWorkshop on Visualization and Processing of Tensor Fields, 2004 - Schloss Dagstuhl, Tyskland
Varighed: 18 apr. 200423 apr. 2004

Konference

KonferenceWorkshop on Visualization and Processing of Tensor Fields, 2004
LandTyskland
BySchloss Dagstuhl
Periode18/04/200423/04/2004

Bibliografisk note

Funding Information:
Our research was partly funded by the DFG project WE 2602/1-1 and the project Relations between Nonlinear Filters in Digital Image Processing within the DFG Priority Program 1114. This is gratefully acknowledged.

Publisher Copyright:
© Springer-Verlag Berlin Heidelberg 2006.

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