The Optimizion of the Training Process Based on Adaboost Algorithm

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The research started from the adaboost algorithm, which was optimized from the training process and the detection process, and on this basis face detection and tracking system was developed.Adaboost is a main algorithm in using.It calculate easily and extraction rate rapidly.But it also have some problem to resolve,such as the detection time is too long,the samples number is so limited and so on.This article give some optimizition methods in the training procedure.

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1046-1049

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December 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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