An improved fuzzy c-means-raindrop optimizer for brain magnetic resonance image segmentation

Bindu Puthentharayil Vikraman, Jabeena A. Afthab
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引用次数: 0

Abstract

The performance of healthcare systems, particularly regarding disease diagnosis and treatment planning, depends on the segmentation of medical images. Fuzzy c-means (FCM) is one of the most widely used clustering techniques for image segmentation due to its simplicity and effectiveness. FCM, on the other hand, has the disadvantages of being noise-sensitive, quickly settling on local optimal solutions, and being sensitive to initial values. This paper suggests a fuzzy c-means clustering improved with a nature-inspired raindrop optimizer for lesion extraction in brain magnetic resonance (MR) images to get around this constraint. In the preprocessing stage, the possible noises in a digital image, such as speckles, gaussian, etc., are eliminated by a hybrid filter—A combination of Gaussian, mean, and median filters. This paper presents a comparative analysis of FCM clustering and FCM-raindrop optimization (FCM-RO) approach. The algorithm performance is evaluated for images subjected to various possible noises that may affect an image during transmission and storage. The proposed FCM-RO approach is comparable to other methods now in use. The suggested system detects lesions with a partition coefficient of 0.9505 and a partition entropy of 0.0890. Brain MR images are analyzed using MATLAB software to find and extract malignancies. Image data retrieved from the public data source Kaggle are used to assess the system’s performance.
一种用于脑磁共振图像分割的改进模糊c-均值-雨滴优化器
医疗保健系统的性能,特别是在疾病诊断和治疗计划方面,取决于医学图像的分割。模糊c均值(FCM)是图像分割中应用最广泛的聚类技术之一,具有简单有效的特点。另一方面,FCM具有噪声敏感、快速确定局部最优解以及对初始值敏感的缺点。本文提出了一种模糊c-均值聚类方法,该方法利用自然启发的雨滴优化器进行改进,用于脑磁共振(MR)图像中的损伤提取,以绕过这一约束。在预处理阶段,数字图像中可能的噪声,如散斑、高斯等,通过混合滤波器消除——高斯滤波器、均值滤波器和中值滤波器的组合。本文对FCM聚类和FCM-RO方法进行了比较分析。针对在传输和存储期间受到可能影响图像的各种可能噪声的图像来评估算法性能。所提出的FCM-RO方法与目前使用的其他方法相当。所建议的系统以0.9505的分配系数和0.0890的分配熵来检测病变。使用MATLAB软件对脑MR图像进行分析,以发现和提取恶性肿瘤。从公共数据源Kaggle检索的图像数据用于评估系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.40
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25
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