KOPS - Das Institutionelle Repositorium der Universität Konstanz

P-DBSCAN : A density based clustering algorithm for exploration and analysis of attractive areas using collections of geo-tagged photos

P-DBSCAN : A density based clustering algorithm for exploration and analysis of attractive areas using collections of geo-tagged photos

Zitieren

Dateien zu dieser Ressource

Prüfsumme: MD5:d6c49323308b5ea253202fd4ad211bb1

KISILEVICH, Slava, Florian MANSMANN, Daniel A. KEIM, 2010. P-DBSCAN : A density based clustering algorithm for exploration and analysis of attractive areas using collections of geo-tagged photos. COM.Geo. Washington, DC, USA, 21. Jun 2010 - 23. Jun 2010. In: LIAO, Lindi, ed.. Proceedings of the 1st International Conference and Exhibition on Computing for Geospatial Research and Application. COM.Geo. Washington, DC, USA, 21. Jun 2010 - 23. Jun 2010. New York, N.Y:Association for Computing Machinery, 38. ISBN 978-1-4503-0031-5

@inproceedings{Kisilevich2010PDBSC-6040, title={P-DBSCAN : A density based clustering algorithm for exploration and analysis of attractive areas using collections of geo-tagged photos}, year={2010}, isbn={978-1-4503-0031-5}, address={New York, N.Y}, publisher={Association for Computing Machinery}, booktitle={Proceedings of the 1st International Conference and Exhibition on Computing for Geospatial Research and Application}, editor={Liao, Lindi}, author={Kisilevich, Slava and Mansmann, Florian and Keim, Daniel A.}, note={Article Number: 38} }

First publ. in: Proceedings of the 1st International Conference and Exhibition on Computing for Geospatial Research & Application, COM.Geo 2010, Washington, DC, USA, June 21 - 23, 2010 / Lindi Liao (Ed.). - New York, N.Y. : Association for Computing Machinery, 2010. - Article No.: 38 - ISBN 978-1-4503-0031-5 P-DBSCAN : A density based clustering algorithm for exploration and analysis of attractive areas using collections of geo-tagged photos eng The rapid spread of location-based devices and cheap storage mechanisms, as well as fast development of Internet technology, allowed collection and distribution of huge amounts of user-generated data, such as people's movement or geo-tagged photos. These types of data produce new challenges for research in different application domains. In many cases, new algorithms should be devised to better portray the phenomena under investigation. In this paper, we present P-DBSCAN, a new density-based clustering algorithm based on DBSCAN for analysis of places and events using a collection of geo-tagged photos. We thereby introduce two new concepts: (1) density threshold, which is defined according to the number of people in the neighborhood, and (2) adaptive density, which is used for fast convergence towards high density regions. Our approach is demonstrated on the area of Washington, D.C. Keim, Daniel A. 2011-03-24T16:08:56Z Mansmann, Florian Keim, Daniel A. Kisilevich, Slava application/pdf deposit-license Mansmann, Florian Kisilevich, Slava 2010

Dateiabrufe seit 01.10.2014 (Informationen über die Zugriffsstatistik)

17.pdf 696

Das Dokument erscheint in:

KOPS Suche


Stöbern

Mein Benutzerkonto