Application of Fuzzy Rule-Based Classifier to CBIR in comparison with other classifiers
At present a great deal of research is being done in different aspects of Content-Based Image Retrieval(CBIR).Image classification is one of the most important tasks that must be dealt with in image DB as an intermediate stage prior to further image retrieval.The issue we address is an evolution from the simplest to more complicated classifiers.Firstly,there is the most intuitive one based on a comparison of the features of a classified object with a class pattern.Next,the paper presents decision trees and Na(i)ve Bayes as another option in a great number of classifying methods.Lastly,to assign the most ambiguous objects we have built fuzzy rule-based classifiers.We propose how to find the ranges of membership functions for linguistic values for fuzzy rule-based classifiers according to crisp attributes.Experiments demonstrate the precision of each classifier for the crisp image data in our CBIR.Furthermore,these results are used to describe a spatial object location in the image and to construct a search engine taking into account data mining.
CBIR classification decision trees fuzzy rule-based classifiers
Tatiana Jaworska
Systems Research Institute Polish Academy of Sciences 6 Newelska Street,Warsaw 01-447,Poland
国际会议
厦门
英文
119-124
2014-08-19(万方平台首次上网日期,不代表论文的发表时间)