Brain tumor detection and segmentation using histogram and optimization algorithm

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Abstract

In this research, an automated and customized neoplasm segmentation methodology is given and valid against ground truth applying simulated T1-weighted resonance pictures in twenty five subjects. a replacement intensity-based segmentation technique known as bar graph primarily based gravitational optimization algorithm is developed to segment the brain image into discriminative sections (segments) with high accuracy. whereas the mathematical foundation of this rule is given in details, the appliance of the projected rule within the segmentation of single T1-weighted pictures (T1-w) modality of healthy and lesion MR images is additionally given. The results show that the neoplasm lesion is divided from the detected lesion slice with eighty nine.6% accuracy.

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Ratha, P., & Mukunthan, B. (2019). Brain tumor detection and segmentation using histogram and optimization algorithm. International Journal of Innovative Technology and Exploring Engineering, 8(10 Special Issue), 125–129. https://doi.org/10.35940/ijitee.J1023.08810S19

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