DocumentCode
109121
Title
Maximum-Likelihood Based Synthesis of Volumetric Textures From a 2D Sample
Author
Urs, Radu-Dragos ; Da Costa, Jean-Pierre ; Germain, Cecile
Author_Institution
IMS Lab., Univ. of Bordeaux, Talence, France
Volume
23
Issue
4
fYear
2014
fDate
Apr-14
Firstpage
1820
Lastpage
1830
Abstract
We propose a genuine 3D texture synthesis algorithm based on a probabilistic 2D Markov random field conceptualization, capable of capturing the visual characteristics of a texture into a unique statistical texture model. We intend to reproduce, in the volumetric texture, the interactions between pixels learned in an input 2D image. The learning is done by nonparametric Parzen-windowing. Optimization is handled voxel by a relaxation algorithm, aiming at maximizing the likelihood of each voxel in terms of its local conditional probability function. Variants are proposed regarding the relaxation algorithm and the heuristic strategies used for the simultaneous handling of the orthogonal slices containing the voxel. The procedures are materialized on various textures through a comparative study and a sensitivity analysis, highlighting the variants strengths and weaknesses. Finally, the probabilistic model is compared objectively with a nonparametric neighborhood-search-based algorithm.
Keywords
Markov processes; computational geometry; image texture; iterative methods; maximum likelihood estimation; statistical analysis; 3D texture synthesis algorithm; heuristic strategies; input 2D image; iterated conditional modes; local conditional probability function; maximum-likelihood based synthesis; nonparametric Parzen-windowing; probabilistic 2D Markov random field conceptualization; relaxation algorithm; sensitivity analysis; simultaneous orthogonal slice handling; statistical texture model; visual characteristics; volumetric textures; Histograms; Lattices; Solid modeling; Solids; Stochastic processes; Three-dimensional displays; Markov random field; Volumetric texture; conditional probability; iterated conditional modes; multiresolution; nonparametric synthesis; stochastic relaxation;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2014.2307477
Filename
6746086
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