LBP histogram selection for supervised color texture classification

@article{Porebski2013LBPHS,
  title={LBP histogram selection for supervised color texture classification},
  author={Alice Porebski and Nicolas Vandenbroucke and Denis Hamad},
  journal={2013 IEEE International Conference on Image Processing},
  year={2013},
  pages={3239-3243}
}
In this paper, we propose a Local Binary Pattern (LBP) histogram selection approach. It consists in assigning to each histogram a score which measures its efficiency to characterize the similarity of the textures within the different classes. The histograms are then ranked according to the proposed score and the most discriminant ones are selected. Experiments, which have been carried out on benchmark color texture image databases, show that the proposed histogram selection approach is able to… CONTINUE READING
7 Citations
15 References
Similar Papers

References

Publications referenced by this paper.
Showing 1-10 of 15 references

Vision texture database

  • R. Picard, C. Graczyk, S. Mann, J. Wachman, L. Picard, L. Campbell
  • Media Laboratory, Massachusetts Institute of…
Highly Influential
3 Excerpts

Identification of citrus disease using color texture features and discriminant analysis

  • R. Pydipati, T. F. Burks, W. S. Lee
  • Computers and Electronics in Agriculture, vol. 52…
  • 2006
1 Excerpt

Generalization of the cooccurrence matrix for colour images: application to colour texture classification

  • V. Arvis, C. Debain, M. Berducat, A. Benassi
  • Image Analysis and Stereology, vol. 23, pp. 63–72…
  • 2004
1 Excerpt

Similar Papers

Loading similar papers…