基于形态学自适应双边滤波的BSA聚类医学图像分割

B. Sridhar, S. Sridhar, V. Nanchariah, K. Gayatri
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引用次数: 3

摘要

本研究的主要目的是开发一种自适应回溯优化搜索算法(Backtracking optimization Search Algorithm, BSA)来解决图像分割中的优化问题。在自适应优化算法中,交叉和突变的概率取决于合适解的值,以提高收敛性能。由于其记忆功能和简单的结构,BSA具有寻找全局优化解的强大功能。然而,该算法还不足以在医学图像的探索和利用之间取得平衡。因此,本文提出了一种改进的自适应跟踪搜索算法,结合形态学操作,通过自适应双边滤波提高唯一区域边缘的清晰度,获得全局数字优化,从而达到聚类图像分割的目的。本文的工作表明,基于颜色质量的图像分割可以更好地检测医学图像中的肿瘤。与基本的BSA优化方法相比,所提出的优化算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster Medical Image Segmentation using Morphological Adaptive Bilateral Filter based BSA Algorithm
The main aim for this research work is to develop an Adaptive BSA (Backtracking Optimized Search Algorithm) method to solve the optimization problem in image segmentation. In adaptive optimization algorithms, the probability of intersection and mutation depends on the value of the appropriate solution to improve convergence performance. Because of its memory function and simple structure, BSA has powerful features to find a globally optimized solution. However, the algorithm is not yet sufficient to strike a balance between exploration and exploitation of a medical image. Therefore, an improved adaptive tracking and search algorithm has been proposed together with morphological operations, where adaptive bilateral filter will improve the sharpness of edges of a unique region for obtaining global digital optimization in order to reach the cluster image segmentation. The proposed work shows better color quality-based image segmentation for the detection of tumors in medical images. The proposed optimization algorithm results show better performance, when compared to the basic BSA optimization method.
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