Publication Details
|
Author(s): G. Nasierding, G. Tsoumakas, A. Kouzani.
Title: “Clustering Based Multi-Label Classification for Image Annotation and Retrieval”.
Availability:
Click here to download the PDF (Acrobat Reader) file (6 pages).
Keywords:
Appeared in:
2009 IEEE International Conference on Systems, Man, and Cybernetics, IEEE, 2009. Abstract: This paper presents a novel multi-label classification framework for domains with large numbers of labels. Automatic image annotation is such a domain, as the available semantic concepts are typically hundreds. The proposed framework comprises an initial clustering phase that breaks the original training set into several disjoint clusters of data. It then trains a multi-label classifier from the data of each cluster. Given a new test instance, the framework first finds the nearest cluster and then applies the corresponding model. Empirical results using two clustering algorithms, four multi-label classification algorithms and three image annotation data sets suggest that the proposed approach can improve the performance and reduce the training time of standard multi-label classification algorithms, particularly in the
case of large number of labels.
Relevant Links:
|
|
|