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Generic object recognition with regional statistical models and layer joint boosting
Authors:Jun Gao   Zhao Xie  Xindong Wu  
Affiliation:

aSchool of Computer Science and Information Engineering, Hefei University of Technology, Hefei 230009, PR China

bDepartment of Computer Science, University of Vermont, Burlington, VT 05405, USA

Abstract:This paper presents novel regional statistical models for extracting object features, and an improved discriminative learning method, called as layer joint boosting, for generic multi-class object detection and categorization in cluttered scenes. Regional statistical properties on intensities are used to find sharing degrees among features in order to recognize generic objects efficiently. Based on boosting for multi-classification, the layer characteristic and two typical weights in sharing-code maps are taken into account to keep the maximum Hamming distance in categories, and heuristic search strategies are provided in the recognition process. Experimental results reveal that, compared with interest point detectors in representation and multi-boost in learning, joint layer boosting with statistical feature extraction can enhance the recognition rate consistently, with a similar detection rate.
Keywords:Generic object recognition   Regional statistical models   Layer joint boosting   Sharing-code maps   ECOC matrix
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