Research Publications

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Batch Mode Active Learning For Multi-Label Image Classification With Informative Label Correlation Mining
Matt (Bang) Zhang, Yang Wang, Wei Wang
The performances of supervised learning techniques on image classification problems heavily rely on the quality of their training images. But the acquisition of high quality training images requires significant efforts from human annotators. In this paper, we propose a novel multi-label batch model active learning (MLBAL) approach that allows the learning algorithm to actively select a batch of informative example-label pairs from which it learns at each learning iteration, so as to learn accurate classifiers with less annotation efforts.
Keywords: active learning, boosting

Details

published
Conference Paper
IEEE Workshop on the Applications of Computer Vision
401-407
Breckenridge/USA
www.wacv2012.org/