PLoS ONE (Jan 2019)

Gray-level invariant Haralick texture features.

  • Tommy Löfstedt,
  • Patrik Brynolfsson,
  • Thomas Asklund,
  • Tufve Nyholm,
  • Anders Garpebring

DOI
https://doi.org/10.1371/journal.pone.0212110
Journal volume & issue
Vol. 14, no. 2
p. e0212110

Abstract

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Haralick texture features are common texture descriptors in image analysis. To compute the Haralick features, the image gray-levels are reduced, a process called quantization. The resulting features depend heavily on the quantization step, so Haralick features are not reproducible unless the same quantization is performed. The aim of this work was to develop Haralick features that are invariant to the number of quantization gray-levels. By redefining the gray-level co-occurrence matrix (GLCM) as a discretized probability density function, it becomes asymptotically invariant to the quantization. The invariant and original features were compared using logistic regression classification to separate two classes based on the texture features. Classifiers trained on the invariant features showed higher accuracies, and had similar performance when training and test images had very different quantizations. In conclusion, using the invariant Haralick features, an image pattern will give the same texture feature values independent of image quantization.