Local features and kernels for classification of texture and object categories: a comprehensive study
International Journal of Computer Vision, Volume 73, Number 2 - jun 2007
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Recently, methods based on local image features have shown promise for
texture and object recognition tasks. This paper presents a large-scale
evaluation of an approach that represents images as distributions
(signatures or histograms) of features extracted from a sparse set of
keypoint locations and learns a Support Vector Machine classifier with
kernels based on two effective measures for comparing distributions, the
Earth Mover's Distance and the chi-square distance. We first evaluate
the performance of our approach with different keypoint detectors and
descriptors, as well as different kernels and classifiers. We then
conduct a comparative evaluation with several state-of-the-art
recognition methods on four texture and five object databases. On most
of these databases, our implementation exceeds the best reported results
and achieves comparable performance on the rest. Finally, we investigate
the in influence of background correlations on recognition performance
via extensive tests on the PASCAL database, for which ground-truth
object localization information is available. Our experiments
demonstrate that image representations based on distributions of local
features are surprisingly effective for classification of texture and
object images under challenging real-world conditions, including
significant intra-class variations and substantial background clutter.
Images and movies
BibTex references
@Article{ZMLS07,
author = "Jianguo Zhang and Marcin Marsza{\l}ek and Svetlana Lazebnik and Cordelia Schmid",
title = "Local features and kernels for classification of texture and object categories: a comprehensive study",
journal = "International Journal of Computer Vision",
number = "2",
volume = "73",
pages = "213--238",
month = "jun",
year = "2007",
keywords = "LEAR, texture recognition, object recognition, scale- and affine-invariant keypoints, support vector machines, kernel methods, LEAR, GRAVIR",
url = "http://lear.inrialpes.fr/pubs/2007/ZMLS07"
}
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