发明名称 Learning classifiers using combined boosting and weight trimming
摘要 A “Classifier Trainer” trains a combination classifier for detecting specific objects in signals (e.g., faces in images, words in speech, patterns in signals, etc.). In one embodiment “multiple instance pruning” (MIP) is introduced for training weak classifiers or “features” of the combination classifier. Specifically, a trained combination classifier and associated final threshold for setting false positive/negative operating points are combined with learned intermediate rejection thresholds to construct the combination classifier. Rejection thresholds are learned using a pruning process which ensures that objects detected by the original combination classifier are also detected by the combination classifier, thereby guaranteeing the same detection rate on the training set after pruning. The only parameter required throughout training is a target detection rate for the final cascade system. In additional embodiments, combination classifiers are trained using various combinations of weight trimming, bootstrapping, and a weak classifier termed a “fat stump” classifier.
申请公布号 US7890443(B2) 申请公布日期 2011.02.15
申请号 US20070777482 申请日期 2007.07.13
申请人 MICROSOFT CORPORATION 发明人 ZHANG CHA;VIOLA PAUL
分类号 G06N5/00 主分类号 G06N5/00
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