Object Recognition using Geometric Properties and a variant of Boosting
نویسندگان
چکیده
This paper describes an approach for learning object descriptions as combinations of simple features using labeled still images. The contribution of this paper is a new method for constructing geometric relations of simple features with the LPBoost algorithm. A full search for relevant geometric relations between simple features is rather impossible because of the computation time required. We therefore use a greedy search strategy. In comparison, our recognition results are better than results using related approaches.
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