bibtype D - Thesis
ARLID 0486676
utime 20240111140957.3
mtime 20180214235959.9
title (primary) (eng) Adaptive Measurement of Material Appearance
publisher
place Praha
name FIT ČVUT
pub_time 2017
specification
page_count 222 s.
media_type E
keyword material appearance
keyword BRDF
keyword BTF
keyword anisotropy
keyword adaptive measurement
keyword sparse sampling
keyword portable setup
keyword ellipsoidal reflector
author (primary)
ARLID cav_un_auth*0282273
full_dept (cz) Rozpoznávání obrazu
full_dept (eng) Department of Pattern Recognition
department (cz) RO
department (eng) RO
full_dept Department of Pattern Recognition
share 100
name1 Vávra
name2 Radomír
institution UTIA-B
garant K
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
source
source_type PDF
url http://library.utia.cas.cz/separaty/2017/RO/vavra-0486676.pdf
source_size 103MB
cas_special
project
ARLID cav_un_auth*0347019
project_id GA17-18407S
agency GA ČR
project
ARLID cav_un_auth*0303412
project_id GA14-02652S
agency GA ČR
country CZ
project
ARLID cav_un_auth*0273627
project_id GAP103/11/0335
agency GA ČR
abstract (eng) One of the ultimate challenges of computer graphics is the realistic visualization of appearance of real-world materials. The appearance can be captured by various approaches, but they are often only approximative or usually require an excessively long measurement time. Therefore, this thesis deals with the precise measurement of material appearance utilizing time-reducing adaptive methods. To better understand the behavior of material appearance, we propose an affordable setup for its instantaneous analysis that is based on an ellipsoidal reflector. Also, we study a human's ability to distinguish structure of a material in a virtual environment in dependence on an observation distance. Although, the first proposed method of adaptive measurement does not require a database of already measured materials, it is precise and very flexible. In this approach, the measured space is filled by one-dimensional continuous signals, which are sampled adaptively. We study the optimal deployment of the signals and propose an interpolation method that enables a quick reconstruction of an arbitrary value. Next, we introduce adaptive approaches that rely on the database. Our template-based methods use precomputed sampling patterns for the measurement of a new material and they achieve better results than conventional methods for more than several hundred samples. On the other hand, our minimal-sampling method achieves outstanding results for less than one hundred samples. It is based on the acquisition of a few samples for each rotation of a material around its normal. Therefore, a measurement setup can be very simple or even industrial multi-angle reflectometers can be used. Among adaptive methods, we introduce a non-adaptive image-based approach for acquisition of a huge number of material samples from a large homogeneous specimen. Also, we use gathered knowledge on material appearance to build an inexpensive setup for the rapid acquisition of approximative datasets and propose a novel method for the correct registration of multi-view images. To sum up, our approaches to analysis and measurement have great potential to improve the efficiency of current material appearance acquisition methods.
RIV BD
FORD0 10000
FORD1 10100
FORD2 10102
reportyear 2018
habilitation
degree Ph.D.
institution Fakulta informačních technologií ČVUT / Ústav teorie informace a automatizace AV ČR, v.v.i
place Thákurova 9, 160 00 Praha 6 / Pod Vodárenskou věží 4, 182 08 Praha 8
year 2017
dates 24.11.2017
num_of_auth 1
inst_support RVO:67985556
permalink http://hdl.handle.net/11104/0282536
confidential S
arlyear 2017
mrcbU10 2017
mrcbU10 Praha FIT ČVUT
mrcbU56 PDF 103MB