Automatická detekce projekčních pláten pomocí hluboké semantické segmentace – Mikuláš Bankovič
Mikuláš Bankovič
Bachelor's thesis
Automatická detekce projekčních pláten pomocí hluboké semantické segmentace
Automatic Projection Screen Localization Using Deep Semantic Segmentation
Abstract:
Cieľom tejto práce je popísať sémantickú segmentáciu zameranú na hlboké učenie, implementovať system schopný detekovať premietané obrazovky pomocou sémantickej segmentácie a tento systém následne ohodnotiť. Začiatočné kapitoly sú venované vysvetleniu a stručnému popisu sémantickej segmentácie. Následujúce kapitoly sa skladajú zo špecifikácií modelu a metód dodatočného spracovania. Výsledkom tejto práce …moreAbstract:
The goal of this bachelor thesis is to describe semantic segmentation algorithms focused on deep learning, implement a screen detection system using semantic segmentation, and provide an evaluation of this system. In the beginning, there is an explanation of the deep learning semantic segmentation. The next chapter consists of the model and post-processing screen retrieval specifications. The outcome …more
Language used: English
Date on which the thesis was submitted / produced: 26. 5. 2020
Identifier:
https://is.muni.cz/th/jwi6y/
Thesis defence
- Date of defence: 22. 6. 2020
- Supervisor: Mgr. Vít Novotný
- Reader: RNDr. Michal Batko, Ph.D., RNDr. Miloš Liška, Ph.D.
Citation record
ISO 690-compliant citation record:
BANKOVIČ, Mikuláš. \textit{Automatická detekce projekčních pláten pomocí hluboké semantické segmentace}. Online. Bachelor's thesis. Brno: Masaryk University, Faculty of Informatics. 2020. Available from: https://theses.cz/id/xbe1rk/.
Full text of thesis
Contents of on-line thesis archive
Published in Theses:- světu
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Institution archiving the thesis and making it accessible: Masarykova univerzita, Fakulta informatikyMasaryk University
Faculty of InformaticsBachelor programme / field:
Informatics / Artificial Intelligence and Natural Language Processing
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