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Towards Acquisition of Semantics of Places and Events by Multi-perspective Analysis of Geotagged Photo Collections

Towards Acquisition of Semantics of Places and Events by Multi-perspective Analysis of Geotagged Photo Collections

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KISILEVICH, Slava, Daniel KEIM, Natalia ANDRIENKO, Gennady L. ANDRIENKO, 2013. Towards Acquisition of Semantics of Places and Events by Multi-perspective Analysis of Geotagged Photo Collections. In: MOORE, Antoni, ed., Igor DRECKI, ed.. Geospatial Visualisation. Berlin [u.a.]:Springer Berlin Heidelberg, pp. 211-233. ISBN 978-3-642-12288-0. Available under: doi: 10.1007/978-3-642-12289-7_10

@incollection{Kisilevich2013Towar-38214, title={Towards Acquisition of Semantics of Places and Events by Multi-perspective Analysis of Geotagged Photo Collections}, year={2013}, doi={10.1007/978-3-642-12289-7_10}, isbn={978-3-642-12288-0}, address={Berlin [u.a.]}, publisher={Springer Berlin Heidelberg}, series={Lecture Notes in Geoinformation and Cartography}, booktitle={Geospatial Visualisation}, pages={211--233}, editor={Moore, Antoni and Drecki, Igor}, author={Kisilevich, Slava and Keim, Daniel and Andrienko, Natalia and Andrienko, Gennady L.} }

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