Department of Pattern Recognition
old web
ÚTIA
AV ČR
Log in
Search this site:
Home
Seminars
People
Demos
Lectures / Tutorials
Resources / Software
Publications
Topics (57)
3D Data Modelling (13)
3D Objects Measurement (2)
Bidirectional Texture Function Modelling (7)
BTF Measurement (1)
Virtual Reality (3)
Benchmarking (2)
Classification (4)
Content Based Image Retrieval (CBIR) (1)
Dynamic Textures (3)
Colour Dynamic Textures Synthesis (1)
Dynamic Texture Modelling (1)
Illumination and Rotation Invariance (1)
Image & Video Analysis / Processing (11)
Image Retrieval (2)
Image Segmentation (5)
Image Sequence Restoration (2)
Remote Sensing (1)
Texture Synthesis (1)
Machine Learning (11)
Mixture Models (11)
Application of Distribution Mixtures (3)
Feature Selection (4)
Mammogram Enhancement (2)
Mathematical Image Modelling (1)
Medical Image Recognition (1)
Pattern Recognition (1)
Probabilistic Expert Systems (1)
Probabilistic Neural Networks (2)
Probabilistic Texture Synthesis (5)
Sampling Based Texture Synthesis (2)
Spatial Data Modelling (1)
Statistical Pattern Recognition (8)
Document Classification (1)
Textural Features (1)
Texture Editing (1)
Texture Segmentation (2)
Visual quality measures (1)
Home
›
Topics
›
Probabilistic Texture Synthesis
Texture Modelling by Discrete Distribution Mixtures
Jiří Grim
Michal Haindl
Abstract:
This texture modelling aaproach is based on discrete distribution mixtures. Unlike some alternative approaches the statistical properties of textures are modelled by a discrete distribution mixture of product components. The univariate distributions in the products are represented in full generality by vectors of probabilities without any constraints. The texture analysis is made in the original quantized spectral level coding. An efficient texture synthesis is based on easy computation of arbitrary conditional distributions from the model. Several successful colour texture applications of the method demonstrate the advantages and but also weak points of the presented approach.
Examples
Natural cloth, jute, rattan, buckram textures (upper row) and their synthetic counterparts.
Reference:
Grim, J.
, and
M. Haindl
,
"
A discrete mixtures colour texture model
",
Texture 2002. The 2nd International Workshop on Texture Analysis and Synthesis
, Glasgow, Heriot-Watt University, pp. 59-62, June, 2002.
BibTex
Google Scholar
Grim, J.
, and
M. Haindl
,
"
Texture modelling by discrete distribution mixtures
",
Computational Statistics & Data Analysis
, vol. 41, no. 3-4, pp. 603-615, 2003.
BibTex
Google Scholar