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

机译:基于多级2D直方图图像分割的脑肿瘤检测使用DEWO优化算法

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摘要

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.
机译:脑肿瘤检测来自磁共振(MR)图像是一项繁琐的任务,但对早期预测疾病至关重要,直到现在现在是基于医生的经验。多级图像分割是用于分割脑MR图像的计算简单和有效的方法。传统的图像分割不考虑图像像素的空间相关性,并且缺乏更好的过滤后效率。本研究介绍了使用差分演进和鲸料优化算法(DEWO)的组合来检测脑肿瘤的仁义基于熵的多级图像分割方法。此外,为了验证提出的混合算法的效率,将其与近期过去的一些突出的成群制算法进行比较,使用级别方差和TSallis熵函数。所提出的图像分割的混合算法能够在对脑MR图像上执行的基于熵的基于算法中的所有其他成分识别算法来实现更好的结果。

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