Image classification using labelled and unlabelled data
EUSIPCO(2006)
摘要
In this paper we present a case study of co-training to image classification. We consider two scene classification tasks: indoors vs. outdoors and animals vs. sports. The results show that co-training with Naïve Bayes using 8-10 labelled examples obtained only 1.2-1.5% lower classification accu- racy than Naïve Bayes trained on the full labelled version of the training set (138 examples in task 1 and 827 examples in task 2). Co-training was found to be sensitive to the choice of base classifier, with Naïve Bayes outperforming Random Forest. We also propose a simple co-training modification based on the different inductive basis of classification algo- rithms and show that it is a promising approach.
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关键词
bayes methods,image classification,natural scenes,base classifier,labelled data,naive bayes,scene classification task,training set,unlabelled data
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