Automatic discovery of discriminative parts as a quadratic assignment problem
2016-11-14Unverified0· sign in to hype
Ronan Sicre, Julien Rabin, Yannis Avrithis, Teddy Furon, Frederic Jurie
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Part-based image classification consists in representing categories by small sets of discriminative parts upon which a representation of the images is built. This paper addresses the question of how to automatically learn such parts from a set of labeled training images. The training of parts is cast as a quadratic assignment problem in which optimal correspondences between image regions and parts are automatically learned. The paper analyses different assignment strategies and thoroughly evaluates them on two public datasets: Willow actions and MIT 67 scenes. State-of-the art results are obtained on these datasets.