bibtype M - Monography Chapter
ARLID 0556464
utime 20240402213459.8
mtime 20220411235959.9
DOI 10.1007/978-3-030-98661-2_103
title (primary) (eng) Bidirectional texture function modeling
specification
page_count 42 s.
book_pages 1984
media_type P
serial
ARLID cav_un_epca*0556463
ISBN 978-3-030-98660-5
title Handbook of Mathematical Models and Algorithms in Computer Vision and Imaging : Mathematical Imaging and Vision
page_num 1023-1064
publisher
place Cham
name Springer International Publishing
year 2023
editor
name1 Chen
name2 Ke
editor
name1 Schonlieb
name2 Carola-Bibiane
editor
name1 Tai
name2 Xue-Cheng
editor
name1 Younces
name2 Laurent
keyword Bidirectional Texture Function
keyword Texture modeling
keyword Markov random fields
keyword Discrete distribution mixtures
keyword EM algorithm
author (primary)
ARLID cav_un_auth*0101093
name1 Haindl
name2 Michal
institution UTIA-B
full_dept (cz) Rozpoznávání obrazu
full_dept (eng) Department of Pattern Recognition
department (cz) RO
department (eng) RO
full_dept Department of Pattern Recognition
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
source
url http://library.utia.cas.cz/separaty/2022/RO/haindl-0556464.pdf
cas_special
project
project_id GA19-12340S
agency GA ČR
country CZ
ARLID cav_un_auth*0376011
abstract (eng) An authentic material's surface reflectance function is a complex function of over sixteen physical variables, which are both unfeasible to measure as well as to mathematically model. The best simplified measurable material texture representation and approximation of this general surface reflectance function is the seven-dimensional Bidirectional Texture Function (BTF). BTF can be simultaneously measured and modeled using state-of-the-art measurement devices and computers and the most advanced mathematical models of visual data. However, such an enormous amount of visual BTF data, measured on the single material sample, inevitably requires state-of-the-art storage, compression, modeling, visualization, and quality verification. Storage technology is still the weak part of computer technology, which lags behind recent data sensing technologies, thus, even for virtual reality correct materials modeling, it is infeasible to use BTF measurements directly. Hence, for visual texture synthesis or analysis applications, efficient mathematical BTF models cannot be avoided. The probabilistic BTF models allow unlimited seamless material texture enlargement, texture restoration, tremendous unbeatable appearance data compression (up to 1:1000 000), and even editing or creating new material appearance data. Simultaneously, they require neither storing actual measurements nor any pixel-wise parametric representation. Unfortunately, there is no single universal BTF model applicable for physically correct modeling of visual properties of all possible BTF textures. Every presented model is better suited for some subspace of possible BTF textures, either natural or artificial. In this contribution, we intend to survey existing mathematical BTF models which allow physically correct modeling and enlargement measured texture under any illumination and viewing conditions while simultaneously offer huge compression ratio relative to natural surface materials optical measurements. Exceptional 3D Markovian or mixture models, which can be either solved analytically or iteratively and quickly synthesized, are presented. Illumination invariants can be derived from some of its recursive statistics and exploited in content-based image retrieval, supervised or unsupervised image recognition. Although our primary goal is physically correct texture synthesis of any unlimited size, the presented models are equally helpful for various texture analytical applications. Their modeling efficiency is demonstrated in several analytical and modeling image applications, in particular, on a (un)supervised image segmentation, bidirectional texture function (BTF) synthesis and compression, and adaptive multi-spectral and multi-channel image and video restoration.
reportyear 2024
RIV BD
FORD0 20000
FORD1 20200
FORD2 20204
num_of_auth 1
inst_support RVO:67985556
permalink http://hdl.handle.net/11104/0330843
confidential S
arlyear 2023
mrcbU14 SCOPUS
mrcbU24 PUBMED
mrcbU34 WOS
mrcbU63 cav_un_epca*0556463 Handbook of Mathematical Models and Algorithms in Computer Vision and Imaging : Mathematical Imaging and Vision Springer International Publishing 2023 Cham 1023 1064 978-3-030-98660-5
mrcbU67 Chen Ke 340
mrcbU67 Schonlieb Carola-Bibiane 340
mrcbU67 Tai Xue-Cheng 340
mrcbU67 Younces Laurent 340