Difference between revisions of "Iiit-H at Imageclef Wikipedia Mm 2009"

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{{Infobox work
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| title = Iiit-H at Imageclef Wikipedia Mm 2009
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| date = 2009
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| authors = [[Vundavalli Srinivasarao]]
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| link = http://ceur-ws.org/Vol-1175/CLEF2009wn-ImageCLEF-Vundavalli2009.pdf
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}}
 
'''Iiit-H at Imageclef Wikipedia Mm 2009''' - scientific work related to [[Wikipedia quality]] published in 2009, written by [[Vundavalli Srinivasarao]].
 
'''Iiit-H at Imageclef Wikipedia Mm 2009''' - scientific work related to [[Wikipedia quality]] published in 2009, written by [[Vundavalli Srinivasarao]].
  
 
== Overview ==
 
== Overview ==
 
In this paper, authors describe the IIITH retrieval system used for the ImageCLEF [[Wikipedia]] MM task. The system automatically ranks the most similar images to a given textual query. The system preprocesses the data set in order to remove the non-informative terms. For each query, the system finds a ranked list of its most similar images using the textual information only.
 
In this paper, authors describe the IIITH retrieval system used for the ImageCLEF [[Wikipedia]] MM task. The system automatically ranks the most similar images to a given textual query. The system preprocesses the data set in order to remove the non-informative terms. For each query, the system finds a ranked list of its most similar images using the textual information only.

Revision as of 07:03, 27 November 2020


Iiit-H at Imageclef Wikipedia Mm 2009
Authors
Vundavalli Srinivasarao
Publication date
2009
Links
Original

Iiit-H at Imageclef Wikipedia Mm 2009 - scientific work related to Wikipedia quality published in 2009, written by Vundavalli Srinivasarao.

Overview

In this paper, authors describe the IIITH retrieval system used for the ImageCLEF Wikipedia MM task. The system automatically ranks the most similar images to a given textual query. The system preprocesses the data set in order to remove the non-informative terms. For each query, the system finds a ranked list of its most similar images using the textual information only.