Why one example is not enough for an image query
暂无分享,去创建一个
For over a decade, query-by-one-example has been a popular query paradigm for multimedia information retrieval. We show, by analyzing feature-to-semantics mapping, that such a paradigm cannot realistically lead to a scalable, satisfactory query performance. More specifically, we cluster a small image dataset based on the images' perceptual features, and show that these image clusters are not coherent to the semantic categories of the images. Though some image categories are well separated from the others in the input space formed by the perceptual features, most categories are colocated in more than one cluster. For a query-concept that is mixed with others in a number of clusters, the query-by-one-example paradigm simply lacks information to identify clearly the target query-concept, and hence cannot achieve satisfactory query results.
[1] Edward Y. Chang,et al. Indexing Images in High-Dimensional and Dynamic-Weighted Feature Spaces , 2002, VDB.
[2] Edward Y. Chang,et al. Support vector machine active learning for image retrieval , 2001, MULTIMEDIA '01.
[3] Anil K. Jain,et al. Data clustering: a review , 1999, CSUR.
[4] Edward Y. Chang,et al. Class-Boundary Alignment for Imbalanced Dataset Learning , 2003 .