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IEEE Trans Pattern Anal Mach Intell. 2010 Feb;32(2):371-7. doi: 10.1109/TPAMI.2009.166.

Large-scale discovery of spatially related images.

IEEE transactions on pattern analysis and machine intelligence

Ondrej Chum, Jirí Matas

Affiliations

  1. Faculty of Electrical Engineering, Czech Technical University, Karlovo námestí 13, 121 35 Prague, Czech Republic. [email protected]

PMID: 20075465 DOI: 10.1109/TPAMI.2009.166

Abstract

We propose a randomized data mining method that finds clusters of spatially overlapping images. The core of the method relies on the min-Hash algorithm for fast detection of pairs of images with spatial overlap, the so-called cluster seeds. The seeds are then used as visual queries to obtain clusters which are formed as transitive closures of sets of partially overlapping images that include the seed. We show that the probability of finding a seed for an image cluster rapidly increases with the size of the cluster. The properties and performance of the algorithm are demonstrated on data sets with 10(4), 10(5), and 5 x 10(6) images. The speed of the method depends on the size of the database and the number of clusters. The first stage of seed generation is close to linear for databases sizes up to approximately 2(34) approximately 10(10) images. On a single 2.4 GHz PC, the clustering process took only 24 minutes for a standard database of more than 100,000 images, i.e., only 0.014 seconds per image.

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