Improving bag-of-features for large scale image search
International Journal of Computer Vision, Volume 87, Number 3 - feb 2010
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This article improves recent methods for large scale image search. We
first analyze the bag-of-features approach in the framework of
approximate nearest neighbor search. This leads us to derive a more
precise representation based on Hamming embedding (HE) and weak
geometric consistency constraints (WGC). HE provides binary signatures
that refine the matching based on visual words. WGC filters matching
descriptors that are not consistent in terms of angle and scale. HE
and WGC are integrated within an inverted file and are efficiently
exploited for all images in the dataset. We then introduce a
graph-structured quantizer which significantly speeds up the
assignment of the descriptors to visual words. A comparison with the
state of the art shows the interest of our approach when high accuracy
is needed.
Experiments performed on three reference datasets and a dataset of one
million of images show a significant improvement due to the binary
signature and the weak geometric consistency constraints, as well as
their efficiency. Estimation of the full geometric transformation,
i.e., a re-ranking step on a short-list of images, is shown to be
complementary to our weak geometric consistency constraints. Our
approach is shown to outperform the state-of-the-art on the three
datasets.
Images and movies
BibTex references
@Article{JDS10a,
author = "Herv\'e J\'egou and Matthijs Douze and Cordelia Schmid",
title = "Improving bag-of-features for large scale image search",
journal = "International Journal of Computer Vision",
number = "3",
volume = "87",
pages = "316-336",
month = "feb",
year = "2010",
url = "http://lear.inrialpes.fr/pubs/2010/JDS10a"
}
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