A Hybrid Genetic Algorithm based Fuzzy Approach for Abnormal Retinal Image Classification

@article{Anitha2010AHG,
  title={A Hybrid Genetic Algorithm based Fuzzy Approach for Abnormal Retinal Image Classification},
  author={J. Anitha and C. Kezi Selva Vijila and D. Jude Hemanth},
  journal={Int. J. Cogn. Informatics Nat. Intell.},
  year={2010},
  volume={4},
  pages={29-43}
}
Fuzzy approaches are one of the widely used artificial intelligence techniques in the field of ophthalmology. These techniques are used for classifying the abnormal retinal images into different categories that assist in treatment planning. The main characteristic feature that makes the fuzzy techniques highly popular is their accuracy. But, the accuracy of these fuzzy logic techniques depends on the expertise knowledge, which indirectly relies on the input samples. Insignificant input samples… 
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