bibtype C - Conference Paper (international conference)
ARLID 0576905
utime 20240402214559.5
mtime 20231024235959.9
SCOPUS 85179554546
DOI 10.1109/IPTA59101.2023.10319998
title (primary) (eng) Invariant Convolutional Networks
specification
page_count 6 s.
media_type E
serial
ARLID cav_un_epca*0576904
ISBN 979-8-3503-2541-6
title Proceedings of The 12th International Conference on Image Processing Theory, Tools and Applications (IPTA 2023)
publisher
place Piscataway
name IEEE
year 2023
keyword Neural network
keyword augmentation
keyword blur
author (primary)
ARLID cav_un_auth*0377447
name1 Lébl
name2 Matěj
institution UTIA-B
full_dept (cz) Zpracování obrazové informace
full_dept (eng) Department of Image Processing
department (cz) ZOI
department (eng) ZOI
full_dept Department of Image Processing
country CZ
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
author
ARLID cav_un_auth*0101087
name1 Flusser
name2 Jan
institution UTIA-B
full_dept (cz) Zpracování obrazové informace
full_dept Department of Image Processing
department (cz) ZOI
department ZOI
full_dept Department of Image Processing
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
source
url http://library.utia.cas.cz/separaty/2023/ZOI/flusser-0576905.pdf
cas_special
project
project_id StrategieAV21/1
agency AV ČR
country CZ
ARLID cav_un_auth*0328930
project
project_id GA21-03921S
agency GA ČR
ARLID cav_un_auth*0412209
abstract (eng) Neural networks are often trained on datasets, that are not fully representative of the expected query images. Many times, the difference stem from the query images being taken in sub-optimal conditions. The most common defects are rotation, scale, blur, noise and intensity & contrast change which were all thoroughly studied and described. In this paper we propose a novel neural network architecture which is invariant to such degradations by design. We incorporate the knowledge build for classical methods directly into the network architecture providing an alternative to the augmentation of the training dataset. In the experiments, the proposed solution outperforms the classical augmentation technique in both accuracy and computational resources needed.\n
action
ARLID cav_un_auth*0456973
name International Conference on Image Processing Theory, Tools and Applications (IPTA 2023) /12./
dates 20231016
mrcbC20-s 20231019
place Paris
country FR
RIV JD
FORD0 20000
FORD1 20200
FORD2 20204
reportyear 2024
num_of_auth 2
presentation_type PR
inst_support RVO:67985556
permalink https://hdl.handle.net/11104/0346495
confidential S
article_num 10319998
arlyear 2023
mrcbU14 85179554546 SCOPUS
mrcbU24 PUBMED
mrcbU34 WOS
mrcbU63 cav_un_epca*0576904 Proceedings of The 12th International Conference on Image Processing Theory, Tools and Applications (IPTA 2023) IEEE 2023 Piscataway 979-8-3503-2541-6