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CEAS
2007
Springer

A Discriminative Classifier Learning Approach to Image Modeling and Spam Image Identification

14 years 5 months ago
A Discriminative Classifier Learning Approach to Image Modeling and Spam Image Identification
We propose a discriminative classifier learning approach to image modeling for spam image identification. We analyze a large number of images extracted from the SpamArchive spam corpora and identify four key spam image properties: color moment, color heterogeneity, conspicuousness, and self-similarity. These properties emerge from a large variety of spam images and are more robust than simply using visual content to model images. We apply multi-class characterization to model images sent with emails. A maximal figure-of-merit (MFoM) learning algorithm is then proposed to design classifiers for spam image identification. Experimental results on about 240 spam and legitimate images show that multi-class characterization is more suitable than singleclass characterization for spam image identification. Our proposed
Byungki Byun, Chin-Hui Lee, Steve Webb, Calton Pu
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where CEAS
Authors Byungki Byun, Chin-Hui Lee, Steve Webb, Calton Pu
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