Image low-level semantic feature extraction based on rough set

CSAE), 2012 IEEE International Conference(2012)

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摘要
Rough set theory can link classification and knowledge together. Therefore, rough set theory is applied to the image low-level semantic feature extraction in this paper. First, the decision table of low-level features is constructed, and then knowledge reduction of rough set is applied to reduce the decision table, which removes redundant samples and redundant attributes, and to identify effective semantic low-level features. Knowledge reduction can only deal with discrete data, therefore knowledge K-means clustering is used to normalize attribute decision table before knowledge reduction. Finally, we use support vector machine(SVM) to verify the validity of the extracted features. The experimental results show that the proposed method not only can guarantee the premise of image semantic recognition, but also greatly reduce the amount of computation.
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关键词
decision tables,feature extraction,image classification,pattern clustering,rough set theory,support vector machines,svm,attribute decision table,discrete data,image low-level semantic feature extraction,image semantic recognition,knowledge k-means clustering,knowledge reduction,semantic classification,support vector machine,attribute reduction,k-means clustering,rough set,set theory,k means clustering,accuracy,clustering algorithms,semantics,image recognition
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