Gabor Filter Parameters Optimization for Texture Classification Based on Genetic Algorithm

@article{Afshang2009GaborFP,
  title={Gabor Filter Parameters Optimization for Texture Classification Based on Genetic Algorithm},
  author={Mehrnaz Afshang and Mohammad Sadegh Helfroush and Azardokht Zahernia},
  journal={2009 Second International Conference on Machine Vision},
  year={2009},
  pages={199-203}
}
Despite Gabor filtering has emerged as one of the leading techniques for texture classification, a unifying approach to its adoption has not emerged yet. As it is true for Gabor filter bank, the design of a filter bank consists of the selection of a proper set of values for the filter parameters. In this paper, it is intended to find a set of Gabor filter bank parameters optimized for the performance of texture classification system. The application method is suggested to compute Gabor filter… CONTINUE READING

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