Dynamic Adaboost learning with feature selection based on parallel genetic algorithm for image annotation
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摘要
Image annotation can be formulated as a classification problem. Recently, Adaboost learning with feature selection has been used for creating an accurate ensemble classifier. We propose dynamic Adaboost learning with feature selection based on parallel genetic algorithm for image annotation in MPEG-7 standard. In each iteration of Adaboost learning, genetic algorithm (GA) is used to dynamically generate and optimize a set of feature subsets on which the weak classifiers are constructed, so that an ensemble member is selected. We investigate two methods of GA feature selection: a binary-coded chromosome GA feature selection method used to perform optimal feature subset selection, and a bi-coded chromosome GA feature selection method used to perform optimal-weighted feature subset selection, i.e. simultaneously perform optimal feature subset selection and corresponding optimal weight subset selection. To improve the computational efficiency of our approach, master-slave GA, a parallel program of GA, is implemented. k-nearest neighbor classifier is used as the base classifier. The experiments are performed over 2000 classified Corel images to validate the performance of the approaches.
论文关键词:Image annotation,Adaboost learning,Feature selection,Parallel genetic algorithm
论文评审过程:Received 6 August 2008, Revised 26 November 2009, Accepted 30 November 2009, Available online 6 December 2009.
论文官网地址:https://doi.org/10.1016/j.knosys.2009.11.020