pnr 2022
DOI: 10.47750/pnr.2022.13.s01.235
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Brain Tumor Segmentation & Classification using Optimized k-means (SFLA) and Ensemble Learning

Abstract: Brain tumor is a common disease that can occur at any age in humans. Early-stage brain tumor segmentation and classification from lowcontrast MRI images is always difficult. In this paper, a new hybrid optimized k-means algorithm based on the shuffled frog leap algorithm (SFLA) followed by thresholding and morphological with ensemble learning is developed. The proposed work is divided into two segments. After pre-processing of low-contrast MRI images the brain tumor area is calculated from the segmented MRI im… Show more

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