An iterative refinement algorithm for content-based retrieval of images
based on low-level features such as textures, color histograms, and
shapes that can be described by feature vectors. This technique adjusts
the original feature space to the new application by performing nonlinear
multidimensional scaling. Consequently, the transformed distance of those
feature vectors which are considered to be similar is minimized in the
new feature space. Meanwhile, the distance among clusters are maintained.
User feedback is utilized to refine the query, by dynamically adjusting
the similarity measure and modifying the linear transform of features,
along with revising the feature vectors.