This paper proposes a new texture descriptor to guide the search and retrieval in image databases. It extracts rich information from global and local primitives of textured images. At a higher level, the global macro-features in textured images are characterized by exploiting the multiresolution properties of the Steerable Pyramid Decomposition. By doing this, the global texture configurations are highlighted. At a finer level, the local arrangements of texture micro-patterns are encoded by the Local Binary Pattern operator.
Experiments were
carried out on the standard Vistex dataset aiming to compare our
descriptors against popular texture extraction methods with regard to
their retrieval accuracies. The comparative evaluations allowed us to
show the superior descriptive properties of our feature representation
methods.