Accurate image search using the contextual dissimilarity measure
IEEE Transactions on Pattern Analysis & Machine Intelligence, Volume 32, Number 1 - january 2010
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This paper introduces the contextual dissimilarity
measure which significantly improves the accuracy of bag-offeatures
based image search. Our measure takes into account the
local distribution of the vectors and iteratively estimates distance
update terms in the spirit of Sinkhorn's scaling algorithm,
thereby modifying the neighborhood structure. Experimental
results show that our approach gives significantly better results
than a standard distance and outperforms the state-of-the-art in
terms of accuracy on the Nister-Stewenius and Lola datasets.
This paper also evaluates the impact of a large number of
parameters, including the number of descriptors, the clustering
method, the visual vocabulary size and the distance measure.
The optimal parameter choice is shown to be quite contextdependent.
In particular using a large number of descriptors is
interesting only when using our dissimilarity measure. We have
also evaluated two novel variants, multiple assignment and rank
aggregation. They are shown to further improve accuracy, at the
cost of higher memory usage and lower efficiency.
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BibTex references
@Article{JSHV10,
author = "Herv\'e J\'egou and Cordelia Schmid and Hedi Harzallah and Jakob Verbeek",
title = "Accurate image search using the contextual dissimilarity measure",
journal = "IEEE Transactions on Pattern Analysis \& Machine Intelligence",
number = "1",
volume = "32",
pages = "2--11",
month = "january",
year = "2010",
keywords = "LEAR, LJK",
url = "http://lear.inrialpes.fr/pubs/2010/JSHV10"
}
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