Detector Ensemble

CVPR(2007)

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摘要
Component-baseddetection methods have demonstrated their promise by integrating a set of part-detectors to deal with large appearance variations of the target. However, an essential and critical issue, i.e., how to handle the im- perfectness of part-detectors in the integration, is not well addressed in the literature. This paper proposes a detec- tor ensemble model that consists of a set of substructure- detectors, each of which is composed of several part- detectors. Two important issues are studied both in theory and in practice, (1) finding an optimal detector ensemble, and (2) detecting targets based on an ensemble. Based on some theoretical analysis, a new model selection strategy is proposed to learn an optimal detector ensemble that has a minimum number of false positives and satisfies the design requirement on the capacity of tolerating missing parts. In addition, this paper also links ensemble-based detection to the inference in Markov random field, and shows that the target detection can be done by a max-product belief prop- agation algorithm.
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关键词
and shows that the target detection can be done by a max-product belief prop- agation algorithm.,the inference in markov random field
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