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Empirical study of multi-label classification methods for image annotation and retrieval

conference contribution
posted on 2010-01-01, 00:00 authored by Gulisong NasierdingGulisong Nasierding, Abbas KouzaniAbbas Kouzani
This paper presents an empirical study of multi-label classification methods, and gives suggestions for multi-label classification that are effective for automatic image annotation applications. The study shows that triple random ensemble multi-label classification algorithm (TREMLC) outperforms among its counterparts, especially on scene image dataset. Multi-label k-nearest neighbor (ML-kNN) and binary relevance (BR) learning algorithms perform well on Corel image dataset. Based on the overall evaluation results, examples are given to show label prediction performance for the algorithms using selected image examples. This provides an indication of the suitability of different multi-label classification methods for automatic image annotation under different problem settings.<br>

History

Location

Sydney, NSW

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2010, IEEE

Pagination

617 - 622

Start date

2010-12-01

End date

2010-12-03

ISBN-13

9781424488162

Title of proceedings

DICTA 2010 : Proceedings of the Digital Image Computing : Techniques and Application

Event

Digital Image Computing : Techniques and Application Conference (2010 : Sydney, N.S.W.)

Publisher

DICTA

Place of publication

Sydney, NSW

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