To search, Click below search items.

 

All Published Papers Search Service

Title

Heuristic Label Set Relevance Learning for Image Annotation

Author

Kai Zhou, Feng Tian

Citation

Vol. 14  No. 6  pp. 13-17

Abstract

Automatic annotation can automatically annotate images with semantic labels to significantly facilitate image retrieval and organization. Traditional web image annotation methods often estimate specific label relevance to image, and neglect the relevance of the assigned label set as a whole. In this paper, A novel image annotation method by heuristic relevance learning is proposed. Label relevance are formulated into a joint framework. Measures that can estimate the relevance are designed, and the assigned label set can provide a more precise description of the image. To reduce the complexity, a heuristic algorithm is introduced, thus making the framework more applicable to the large scale web image dataset. Experimental results demonstrate the general applicability of the algorithm.

Keywords

Image semantic annotation, label set relevance, heuristic learning.

URL

http://paper.ijcsns.org/07_book/201406/20140603.pdf