A Comparative Study of Automatic Person Re-identification Methods and Their Application to Football – Bc. Dominika Trebatická
Bc. Dominika Trebatická
Master's thesis
A Comparative Study of Automatic Person Re-identification Methods and Their Application to Football
A Comparative Study of Automatic Person Re-identification Methods and Their Application to Football
Abstract:
V oblasti počítačového videnia chápeme reidentifikáciu osôb ako znovurozoznanie identity osoby, ktorá bola predtým už zachytená kamerovým systémom, typicky v bezpečnostných monitorovacích systémoch. Táto diplomová práca skúma možnosť použitia metód reidentifikácie osôb v oblasti športových aplikácií. Skúmané metódy sú z oblasti hlbokého učenia.Abstract:
In computer vision, person re-identification is the task of recognizing and assigning an identity to a person previously observed, typically in a different camera view. This thesis addresses the possibility of using person re-identification in a sports setting and compares it with the usual task of person re-identification in public spaces. Emphasis is placed on deep learning approaches.
Language used: English
Date on which the thesis was submitted / produced: 21. 5. 2018
Identifier:
https://is.muni.cz/th/pjtuv/
Thesis defence
- Date of defence: 20. 6. 2018
- Supervisor: doc. RNDr. Pavel Matula, Ph.D.
- Reader: Mgr. Karel Štěpka, Ph.D.
Citation record
ISO 690-compliant citation record:
TREBATICKÁ, Dominika. \textit{A Comparative Study of Automatic Person Re-identification Methods and Their Application to Football}. Online. Master's thesis. Brno: Masaryk University, Faculty of Informatics. 2018. Available from: https://theses.cz/id/4s6dkf/.
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Published in Theses:- světu
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Institution archiving the thesis and making it accessible: Masarykova univerzita, Fakulta informatikyMasaryk University
Faculty of InformaticsMaster programme / field:
Informatics / Computer Graphics
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