Image Analysis and Stereology (Jun 2020)

Application of Texture Features and Machine Learning Methods to Grain Segmentation in Rock Material Images

  • Karolina Nurzynska,
  • Sebastian Iwaszenko

DOI
https://doi.org/10.5566/ias.2186
Journal volume & issue
Vol. 39, no. 2
pp. 73 – 90

Abstract

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The segmentation of rock grains on images depicting bulk rock materials is considered. The rocks’ material images are transformed by selected texture operators, to obtain a set of features describing them. The first order features, second-order features, run-length matrix, grey tone difference matrix, and Laws’ energies are used for this purpose. The features are classified using k-nearest neighbours, support vector machines, and artificial neural networks classifiers. The results show that the border of rocks grains can be determined with above 75% accuracy. The multi-texture approach was also investigated, leading to an increase in accuracy to over 79% for the early-fusion of features. Attempts were made to reduce feature space dimensionality by manually picking features as well as by the use of principal component analysis. The outcomes showed a significant decrease in accuracy. The obtained results have been visually compared with the ground truth. The compliance observed can be considered to be satisfactory.

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