Breast Cancer Images Segmentation using Fuzzy Cellular Automaton (2023)

Abstract

Breast cancer is the most common type of cancer found in women. One of the most effiective methods for early identification of breast cancer is the mammogram. Numerous computer-aided systems for detecting breast cancer from mammograms have been introduced. In this paper, we present a new way for combining Cellular Automata with Fuzzy Logic, resulting in a so-called Fuzzy Cellular Automaton. The results obtained by testing our proposed approach on the mini-MIAS dataset are close to the ground truth, which is highly encouraging. The choice of using fuzzy logic provides a more flexible technique for categorizing the pixels of interest. The suggested method produces promising results for segmenting the mass region in mammograms with an accuracy of 98,66%, according to the experimental results.

Citare

@Inproceedings{Ion2023BreastCI,
 author = {Iulia-Andreea Ion and Cristiana Moroz-Dubenco and A. Andreica},
 booktitle = {International Conference on Knowledge-Based Intelligent Information & Engineering Systems},
 title = {Breast Cancer Images Segmentation using Fuzzy Cellular Automaton},
 year = {2023}
}

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