Automatic image annotation empowers the user to search an image database using keywords, which is often a more practical option
than a query-by-example approach. In this work, we present a novel image annotation scheme which is fast and effective and
scales well to a large number of keywords. We first provide a feature weighting scheme suitable for image annotation, and
then an annotation model based on the one-class support vector machine. We show that the system works well even with a small
number of visual features. We perform experiments using the Corel Image Collection and compare the results with a well-established
image annotation system.