TL;DR
This paper introduces an enhanced Harris Hawks Optimization algorithm with altruism and chaos for multi-level brain MRI segmentation, improving efficiency and accuracy in medical image analysis.
Contribution
It presents a novel hybrid metaheuristic algorithm combining altruism and chaos with HHO for improved brain MRI segmentation.
Findings
Achieved better segmentation accuracy compared to existing methods.
Demonstrated robustness across multiple benchmark datasets.
Reduced computational cost in multi-thresholding tasks.
Abstract
Segmentation is an essential requirement in medicine when digital images are used in illness diagnosis, especially, in posterior tasks as analysis and disease identification. An efficient segmentation of brain Magnetic Resonance Images (MRIs) is of prime concern to radiologists due to their poor illumination and other conditions related to de acquisition of the images. Thresholding is a popular method for segmentation that uses the histogram of an image to label different homogeneous groups of pixels into different classes. However, the computational cost increases exponentially according to the number of thresholds. In this paper, we perform the multi-level thresholding using an evolutionary metaheuristic. It is an improved version of the Harris Hawks Optimization (HHO) algorithm that combines the chaotic initialization and the concept of altruism. Further, for fitness assignment, we…
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Taxonomy
MethodsHarris Hawks optimization
