OU Portal
Log In
Welcome
Applicants
Z6_60GI02O0O8IDC0QEJUJ26TJDI4
Error:
Javascript is disabled in this browser. This page requires Javascript. Modify your browser's settings to allow Javascript to execute. See your browser's documentation for specific instructions.
{}
Close
Publikační činnost
Probíhá načítání, čekejte prosím...
publicationId :
tempRecordId :
actionDispatchIndex :
navigationBranch :
pageMode :
tabSelected :
isRivValid :
Record type:
stať ve sborníku (D)
Home Department:
Ústav pro výzkum a aplikace fuzzy modelování (94410)
Title:
Nonlocal Laplace Operator in Image Processing
Citace
Perfiljeva, I. a ZÁMEČNÍKOVÁ, H. Nonlocal Laplace Operator in Image Processing.
In:
ISCAMI 2020: Proceedings of the 21st International Student Conference on Applied Mathematics and Informatics 2020-09-08 Malenovice.
Ostrava: Ostravská univerzita, 2020. s. 67-67. ISBN 978-80-7599-199-7.
Subtitle
Publication year:
2020
Obor:
Obecná matematika
Number of pages:
1
Page from:
67
Page to:
67
Form of publication:
Tištená verze
ISBN code:
978-80-7599-199-7
ISSN code:
Proceedings title:
Proceedings of the 21st International Student Conference on Applied Mathematics and Informatics
Proceedings:
Mezinárodní
Publisher name:
Ostravská univerzita
Place of publishing:
Ostrava
Country of Publication:
Sborník vydaný v ČR
Název konference:
ISCAMI 2020
Místo konání konference:
Malenovice
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků:
Celosvětová akce
WoS code:
EID:
Key words in English:
Regularization, P-Laplace operator, Image processing
Annotation in original language:
Regularization is a principle, concerning a wide range of science domains. Several methods, using this technique, have been proposed. However, there are some limitations to the functionals used in regularization. To remove them, the idea is to replace standard local operators by their nonlocal versions. Our approach is focused on discrete p-Laplace regularization on weighted graphs. As the name implies, this process incorporates weighted p-Laplace operator, which has become increasingly demanded in image processing. In images, pixels have a specific organization expressed by their spatial connectivity. Therefore, a typical structure used to represent images is a graph, where each pixel is identified with one vertex and semantically related pixels are connected by edges. The problem is to find a relevant topology of a graph. Moreover, this topology should be in a correspondence with the purpose of image processing. We give various examples and illustrate usefulness of the proposed approach on problems of noise filtering and segmentation, that are connected with the regularization.
Annotation in english language:
References
Reference
R01:
Complementary Content
Deferred Modules
${title}
${badge}
${loading}
Deferred Modules