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1. Multilabel SVM active learning for image classification
Li, X.; Wang, L.; Sung, E.;
Image Processing, 2004. ICIP '04. 2004 International Conference on
Volume 4,  24-27 Oct. 2004 Page(s):2207 - 2210 Vol. 4
Abstract:

Image classification is an important task in computer vision. However, how to assign suitable labels to images is a subjective matter, especially when some images can be categorized into multiple classes simultaneously. Multilabel image classification focuses on the problem that each image can have one or multiple labels. It is known that manually labelling images is time-consuming and expensive. In order to reduce the human effort of labelling images, especially multilabel images, we proposed a multilabel SVM active learning method. We also proposed two selection strategies: Max Loss strategy and Mean Max Loss strategy. Experimental results on both artificial data and real-world images demonstrated the advantage of proposed method.
Abstract | Full Text: PDF(606 KB)    IEEE CNF
 
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