Title of article :
Minimum Probability of Error Image Retrieval
Author/Authors :
N. Vasconcelos، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
We address the design of optimal architectures for
image retrieval from large databases. Minimum probability of
error (MPE) is adopted as the optimality criterion and retrieval
formulated as a problem of statistical classification. The probability
of retrieval error is lower- and upper-bounded by functions
of the Bayes and density estimation errors, and the impact of
the components of the retrieval architecture (namely, the feature
transformation and density estimation) on these bounds is characterized.
This characterization suggests interpreting the search
for the MPE feature set as the search for the minimum of the
convex hull of a collection of curves of probability of error versus
feature space dimension. A new algorithm for MPE feature design,
based on a dictionary of empirical feature sets and the wrapper
model for feature selection, is proposed. It is shown that, unlike
traditional feature selection techniques, this algorithm scales
to problems containing large numbers of classes. Experimental
evaluation reveals that the MPE architecture is at least as good as
popular empirical solutions on the narrow domains where these
perform best but significantly outperforms them outside these
domains.
Keywords :
minimum probability of error , mixture models , wrapper methods. , optimal retrieval systems , Bayesian methods , color and texture , Expectation–maximization , Feature selection , Image retrieval , imagesimilarity , Multiresolution
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING