Association control in mobile wireless networks
Minkyong Kim, Zhen Liu, et al.
INFOCOM 2008
Extraction of semantic features from visual concepts is essential for meaningful content management in terms of filtering, searching and retrieval. Recently, machine learning techniques have been shown to provide a computational framework to map low level features to high level semantics. In this paper we expose these techniques to the challenge of supporting a moderately large lexicon of semantic concepts. Using the TREC 2002 benchmark corpus for training and validation we investigate a support vector machine based learning system for modeling 34 visual concepts. The detection results show excellent performance for a set of concepts with moderately large training samples. Promising performance is also observed for concepts with few training concepts.
Minkyong Kim, Zhen Liu, et al.
INFOCOM 2008
Ilie Tanase, Yinglong Xia, et al.
GRADES 2014
Daniel M. Bikel, Vittorio Castelli
ACL 2008
Nanda Kambhatla
ACL 2004