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Learning with few examples for binary and multiclass classification using regularization of randomized trees
Authors:Erik Rodner  Joachim Denzler
Affiliation:Chair for Computer Vision, Friedrich Schiller University of Jena, Germany
Abstract:The human visual system is often able to learn to recognize difficult object categories from only a single view, whereas automatic object recognition with few training examples is still a challenging task. This is mainly due to the human ability to transfer knowledge from related classes. Therefore, an extension to Randomized Decision Trees is introduced for learning with very few examples by exploiting interclass relationships. The approach consists of a maximum a posteriori estimation of classifier parameters using a prior distribution learned from similar object categories. Experiments on binary and multiclass classification tasks show significant performance gains
Keywords:Object categorization  Randomized trees  Few examples  Interclass transfer  Transfer learning
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