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Semantic Image Description and Classification Based on Generalized Set


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1 Institute of Information Science, Kim II Sung University, Korea, Democratic People's Republic of
     

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A semantic image description model based on generalized set is proposed, and the semantic similarity (distance) measure between images is presented. Semantic image information can be completely represented in this model as compared with previous researches based on vector space. The semantic image description model based on generalized set is similar to human understanding of image knowledge. For the purpose of the semantic image classification, semantic distance based on support vector machine classifier is employed. Experimental results show the validity of new method, and that the image classification accuracy is improved.

Keywords

Semantic Image Description, Image Classification, Generalized Set.
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Abstract Views: 221

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  • Semantic Image Description and Classification Based on Generalized Set

Abstract Views: 221  |  PDF Views: 7

Authors

Ri Chang Yong
Institute of Information Science, Kim II Sung University, Korea, Democratic People's Republic of
Pak DuHo
Institute of Information Science, Kim II Sung University, Korea, Democratic People's Republic of
Rim Kyong Chol
Institute of Information Science, Kim II Sung University, Korea, Democratic People's Republic of
Ju JinHok
Institute of Information Science, Kim II Sung University, Korea, Democratic People's Republic of

Abstract


A semantic image description model based on generalized set is proposed, and the semantic similarity (distance) measure between images is presented. Semantic image information can be completely represented in this model as compared with previous researches based on vector space. The semantic image description model based on generalized set is similar to human understanding of image knowledge. For the purpose of the semantic image classification, semantic distance based on support vector machine classifier is employed. Experimental results show the validity of new method, and that the image classification accuracy is improved.

Keywords


Semantic Image Description, Image Classification, Generalized Set.

References