Title
Learning image similarities and categories from content analysis and relevance feedback
Abstract
In this work, a scheme that learns image similarities and categories from relevance feedback is presented. First, we choose the most suitable features to describe images by content analysis and categorize each image by predicting its semantic meanings. During the retrieval process, users are allowed to confirm semantic classification of the query example and evaluate retrieval results with relevance feedback. By analyzing the feedback information, the system learns both image similarities and semantic meanings. In similarity learning, the retrieving results are refined by modifying the similarity metric. Semantic learning is performed by using the decision tree training algorithm.
Year
DOI
Venue
2000
10.1145/357744.357927
ACM Multimedia Workshops
Keywords
Field
DocType
semantic meaning,feedback information,similarity metric,retrieval result,content analysis,similarity learning,retrieval process,semantic learning,image similarity,relevance feedback,semantic classification,image retrieval,decision tree
Similarity learning,Semantic similarity,Categorization,Decision tree,Interactive Learning,Content analysis,Relevance feedback,Information retrieval,Computer science,Image retrieval
Conference
ISBN
Citations 
PageRank 
1-58113-311-1
5
0.59
References 
Authors
6
2
Name
Order
Citations
PageRank
Zijun Yang1181.74
C. -C. Jay Kuo250.93