Justifying Tensor-Driven Diffusion from Structure-Adaptive Statistics of Natural Images

2015 | conference paper. A publication with affiliation to the University of Göttingen.

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​Justifying Tensor-Driven Diffusion from Structure-Adaptive Statistics of Natural Images​
Peter, P.; Weickert, J.; Munk, A. ; Krivobokova, T.   & Li, H. ​ (2015)
In:Tai, Xue-Cheng​ (Ed.), ​Energy minimization methods in computer vision and pattern recognition pp. 263​-277. , Hong Kong, China.
Cham​: Springer. DOI: https://doi.org/10.1007/978-3-319-14612-6_20 

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Authors
Peter, Pascal; Weickert, Joachim; Munk, Axel ; Krivobokova, Tatyana ; Li, Housen 
Editors
Tai, Xue-Cheng
Abstract
Tensor-driven anisotropic diffusion and regularisation have been successfully applied to a wide range of image processing and computer vision tasks such as denoising, inpainting, and optical flow. Empirically it has been shown that anisotropic models with a diffusion tensor perform better than their isotropic counterparts with a scalar-valued diffusivity function. However, the reason for this superior performance is not well understood so far. Moreover, the specific modelling of the anisotropy has been carried out in a purely heuristic way. The goal of our paper is to address these problems. To this end, we use the statistics of natural images to derive a unifying framework for eight isotropic and anisotropic diffusion filters that have a corresponding variational formulation. In contrast to previous statistical models, we systematically investigate structure-adaptive statistics by analysing the eigenvalues of the structure tensor. With our findings, we justify existing successful models and assess the relationship between accurate statistical modelling and performance in the context of image denoising.
Issue Date
2015
Publisher
Springer
Project
RTG 2088: Research Training Group 2088 Discovering structure in complex data: Statistics meets Optimization and Inverse Problems 
Series
Lecture Notes in Computer Science 
ISBN
978-3-319-14611-9
978-3-319-14612-6
Conference Place
Hong Kong, China
Event start
2015-01-13
Event end
2015-01-16
ISSN
0302-9743
Language
English

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