Exploiting generalized discriminative multiple instance learning for multimedia semantic concept detection
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摘要
A generalized discriminative multiple instance learning (GDMIL) algorithm is presented to train the classifier in the condition of vague annotation of training samples GDMIL not only inherits the original MIL's capability of automatically weighting the instances in the bag according to their relevance to the concept but also integrates generative models using discriminative training. It is evaluated on the task of multimedia semantic concept detection using the development data set of TRECVID 2005. The experimental results show GDMIL outperforms the baseline systems trained on MIL with diverse density and expectation–maximization diverse density and the system without MIL.
论文关键词:Multiple instance learning,Discriminative training,Semantic concept detection,Area under the ROC curve,Classification accuracy
论文评审过程:Received 8 October 2007, Revised 4 February 2008, Accepted 31 March 2008, Available online 6 April 2008.
论文官网地址:https://doi.org/10.1016/j.patcog.2008.03.029