Entropy (Nov 2013)

Stochasticity: A Feature for the Structuring of Large and Heterogeneous Image Databases

  • Rémi Mégret,
  • Abdourrahmane M. Atto,
  • Yannick Berthoumieu

DOI
https://doi.org/10.3390/e15114782
Journal volume & issue
Vol. 15, no. 11
pp. 4782 – 4801

Abstract

Read online

The paper addresses image feature characterization and the structuring of large and heterogeneous image databases through the stochasticity or randomness appearance. Measuring stochasticity involves finding suitable representations that can significantly reduce statistical dependencies of any order. Wavelet packet representations provide such a framework for a large class of stochastic processes through an appropriate dictionary of parametric models. From this dictionary and the Kolmogorov stochasticity index, the paper proposes semantic stochasticity templates upon wavelet packet sub-bands in order to provide high level classification and content-based image retrieval. The approach is shown to be relevant for texture images.

Keywords