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Integrating Representative and Discriminative Models for Object Category Detection
Beijing, China October 17-October 20
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICCV.2005.124Tenth IEEE International Conference o ...
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Mario Fritz, Technical University Darmstadt
Bastian Leibe, Technical University Darmstadt
Barbara Caputo, KTH Stockholm
Bernt Schiele, Technical University Darmstadt
Category detection is a lively area of research. While categorization algorithms tend to agree in using local descriptors, they differ in the choice of the classifier, with some using generative models and others discriminative approaches. This paper presents a method for object category detection which integrates a generative model with a discriminative classifier. For each object category, we generate an appearance codebook, which becomes a common vocabulary for the generative and discriminative methods. Given a query image, the generative part of the algorithm finds a set of hypotheses and estimates their support in location and scale. Then, the discriminative part verifies each hypothesis on the same codebook activations. The new algorithm exploits the strengths of both original methods, minimizing their weaknesses. Experiments on several databases show that our new approach performs better than its building blocks taken separately. Moreover, experiments on two challenging multi-scale databases show that our new algorithm outperforms previously reported results.
Citation:
Mario Fritz, Bastian Leibe, Barbara Caputo, Bernt Schiele, "Integrating Representative and Discriminative Models for Object Category Detection," iccv, vol. 2, pp.1363-1370, Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 2, 2005
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