Texture Modelling with Nested High-order Markov-Gibbs Random Fields

10/08/2015
by   Ralph Versteegen, et al.
0

Currently, Markov-Gibbs random field (MGRF) image models which include high-order interactions are almost always built by modelling responses of a stack of local linear filters. Actual interaction structure is specified implicitly by the filter coefficients. In contrast, we learn an explicit high-order MGRF structure by considering the learning process in terms of general exponential family distributions nested over base models, so that potentials added later can build on previous ones. We relatively rapidly add new features by skipping over the costly optimisation of parameters. We introduce the use of local binary patterns as features in MGRF texture models, and generalise them by learning offsets to the surrounding pixels. These prove effective as high-order features, and are fast to compute. Several schemes for selecting high-order features by composition or search of a small subclass are compared. Additionally we present a simple modification of the maximum likelihood as a texture modelling-specific objective function which aims to improve generalisation by local windowing of statistics. The proposed method was experimentally evaluated by learning high-order MGRF models for a broad selection of complex textures and then performing texture synthesis, and succeeded on much of the continuum from stochastic through irregularly structured to near-regular textures. Learning interaction structure is very beneficial for textures with large-scale structure, although those with complex irregular structure still provide difficulties. The texture models were also quantitatively evaluated on two tasks and found to be competitive with other works: grading of synthesised textures by a panel of observers; and comparison against several recent MGRF models by evaluation on a constrained inpainting task.

READ FULL TEXT

page 6

page 10

page 11

page 12

page 13

page 15

research
12/17/2019

Conditional Generative ConvNets for Exemplar-based Texture Synthesis

The goal of exemplar-based texture synthesis is to generate texture imag...
research
12/09/2019

Learning a Neural 3D Texture Space from 2D Exemplars

We propose a generative model of 2D and 3D natural textures with diversi...
research
02/07/2023

Exact Inference in High-order Structured Prediction

In this paper, we study the problem of inference in high-order structure...
research
05/10/2023

Learning in a Single Domain for Non-Stationary Multi-Texture Synthesis

This paper aims for a new generation task: non-stationary multi-texture ...
research
06/26/2015

An Efficient Post-Selection Inference on High-Order Interaction Models

Finding statistically significant high-order interaction features in pre...
research
05/22/2023

Dynamical noise can enhance high-order statistical structure in complex systems

Recent research has provided a wealth of evidence highlighting the pivot...
research
10/31/2020

Some Theory for Texture Segmentation

In the context of texture segmentation in images, and provide some theor...

Please sign up or login with your details

Forgot password? Click here to reset