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Brain Tumor Detection Based on Multilevel 2D Histogram Image Segmentation Using DEWO Optimization Algorithm

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  • Sumit Kumar

    (Amity University, India)

  • Garima Vig

    (Amity University, India)

  • Sapna Varshney

    (University of Delhi, India)

  • Priti Bansal

    (Netaji Subhas University of Technology, India)

Abstract

Brain tumor detection from magnetic resonance (MR)images is a tedious task but vital for early prediction of the disease which until now is solely based on the experience of medical practitioners. Multilevel image segmentation is a computationally simple and efficient approach for segmenting brain MR images. Conventional image segmentation does not consider the spatial correlation of image pixels and lacks better post-filtering efficiency. This study presents a Renyi entropy-based multilevel image segmentation approach using a combination of differential evolution and whale optimization algorithms (DEWO) to detect brain tumors. Further, to validate the efficiency of the proposed hybrid algorithm, it is compared with some prominent metaheuristic algorithms in recent past using between-class variance and the Tsallis entropy functions. The proposed hybrid algorithm for image segmentation is able to achieve better results than all the other metaheuristic algorithms in every entropy-based segmentation performed on brain MR images.

Suggested Citation

  • Sumit Kumar & Garima Vig & Sapna Varshney & Priti Bansal, 2020. "Brain Tumor Detection Based on Multilevel 2D Histogram Image Segmentation Using DEWO Optimization Algorithm," International Journal of E-Health and Medical Communications (IJEHMC), IGI Global, vol. 11(3), pages 71-85, July.
  • Handle: RePEc:igg:jehmc0:v:11:y:2020:i:3:p:71-85
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