Title
An Applicable Multiple-Level Classification Based on Image Semantic
Abstract
In this paper, we propose a multiple-level image classification; the multiple-level image semantics classifier is constructed according to the hierarchical semantics tree from user. Image features are derived from the training set using prior knowledge, and the hierarchical classifier is constructed according to the class correlation measure. This measure considers the relation of the classifiers between different levels, and between the classifiers in the same level. The unlabelled pictures can be classified from the top down and assigned to corresponding class and semantic labels. In our experiment, meta-classifier is a binary SVM classifier; the hierarchical classifier is build by selecting meta-classifiers with the best combining performance. The experiment result shows that the hierarchical classifier is not effective even though every meta-classifier perform very well. Meanwhile, it proves our method is applicable.
Year
DOI
Venue
2006
10.1109/ICICIC.2006.410
ICICIC (3)
Keywords
DocType
ISBN
different level,image semantic,multiple-level image classification,image feature,multiple-level image semantics classifier,experiment result,binary svm classifier,hierarchical classifier,corresponding class,class correlation measure,applicable multiple-level classification,hierarchical semantics tree
Conference
0-7695-2616-0
Citations 
PageRank 
References 
0
0.34
0
Authors
4
Name
Order
Citations
PageRank
Hongli Xu151.22
De Xu215813.08
Fangshi Wang3214.74
Feifei Fan401.01