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    Hamming Embedding Similarity-based Image Classification

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    International audienceIn this paper, we have presented a novel approach to image classification based on a matching technique. It consists in combining the Hamming-Embedding similarity-based matching method with a similarity space encoding, which subsequently allows the use of a linear SVM. This method is efficient and achieves state-of-the-art classification results on two reference image classification benchmarks: the PASCAL VOC 2007 and Caltech-256 datasets. Moreover, it is shown to be complementary with the other best classification method based, namely the Fisher kernel. To our knowledge, this method is the first matching-based approach to provide such competitive results. We believe that the flexibility offered by this framework is likely to be extended, in particular for a better integration of the geometrical constraints. As a secondary contribution, we have proposed an effective variant of the SIFT descriptor, which gives a slight yet consistent improvement on classification accuracy. Its interest has been validated with the Fisher Kernel
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