Data Entry: Please note that the research database will be replaced by UNIverse by the end of October 2023. Please enter your data into the system https://universe-intern.unibas.ch. Thanks

Login for users with Unibas email account...

Login for registered users without Unibas email account...

 
Integrated Real-Time Data Stream Analysis and Sketch-Based Video Retrieval in Team Sports
ConferencePaper (Artikel, die in Tagungsbänden erschienen sind)
 
ID 4495488
Author(s) Probst, Lukas; Rauschenbach, Fabian; Schuldt, Heiko; Seidenschwarz, Philipp; Rumo, Martin
Author(s) at UniBasel Schuldt, Heiko
Probst, Lukas
Rauschenbach, Fabian
Seidenschwarz, Philipp German
Year 2018
Title Integrated Real-Time Data Stream Analysis and Sketch-Based Video Retrieval in Team Sports
Book title (Conference Proceedings) Proceedings of the 2018 IEEE International Conference on Big Data (BigData'18)
Place of Conference Seattle, WA, USA
Publisher IEEE
Pages 548-555
ISSN/ISBN 978-1-5386-5036-3 ; 978-1-5386-5035-6
Abstract Big data in sports comes with two closely related challenges: first, the online analysis of continuous data streams to identify characteristic events and second, advanced retrieval in video collections and/or event data that help game analysts to search for characteristic video scenes. For both challenges, dedicated big data stream processing and retrieval systems have been developed. However, there is no infrastructure yet that integrates retrieval and automatic online data stream analysis. In this paper, we close this gap by seamlessly combining StreamTeam, our real-time team sports analysis system, and SportSense, our team sports video retrieval system, to an integrated team sports analysis infrastructure that (i) automatically detects (collaborative) events and generates statistics in real-time based on a continuous stream of raw positions, (ii) visualizes the analysis results in real-time, (iii) stores the analysis results persistently for offline activities, and (iv) leverages the stored analysis results for intuitive sketchbased video retrieval.
URL http://dx.doi.org/10.1109/BigData.2018.8622592
edoc-URL https://edoc.unibas.ch/68622/
Full Text on edoc No
Digital Object Identifier DOI 10.1109/BigData.2018.8622592
ISI-Number WOS:000468499300071
 
   

MCSS v5.8 PRO. 0.377 sec, queries - 0.000 sec ©Universität Basel  |  Impressum   |    
04/05/2024