<XML><RECORDS><RECORD><REFERENCE_TYPE>31</REFERENCE_TYPE><REFNUM>9250</REFNUM><AUTHORS><AUTHOR>Zuccon,G.</AUTHOR><AUTHOR>Leelanupab,T.</AUTHOR><AUTHOR>Goyal,A.</AUTHOR><AUTHOR>Halvey,M.</AUTHOR><AUTHOR>Punitha,P.</AUTHOR><AUTHOR>Jose,J.M.</AUTHOR></AUTHORS><YEAR>2009</YEAR><TITLE>The University of Glasgow at ImageClefPhoto 2009</TITLE><PLACE_PUBLISHED>Corfu, Greece</PLACE_PUBLISHED><PUBLISHER>N/A</PUBLISHER><LABEL>Zuccon:2009:9250</LABEL><ABSTRACT>In this paper we describe the approaches adopted to generate the five runs submitted to ImageClefPhoto 2009 by the University of Glasgow. The aim of our methods is to exploit document diversity in the rankings. All our runs used text statistics extracted from the captions associated to each image in the collection, except one run which combines the textual statistics with visual features extracted from the provided images. The results suggest that our methods based on text captions significantly improve the performance of the respective baselines, while the approach that combines visual features with text statistics shows lower levels of improvements.</ABSTRACT></RECORD></RECORDS></XML>