基于遗传算法和模糊隶属函数的医学图像阈值分割

Shashwati Mishra, M. Panda
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引用次数: 0

摘要

阈值分割是图像分析过程中的重要步骤之一,广泛应用于各种图像处理技术中。医学图像分割在手术计划、肿瘤识别、器官诊断等方面起着非常重要的作用。本文提出了一种将遗传算法与模糊逻辑相结合的医学图像分割方法。模糊逻辑可以处理不确定和不精确的信息。遗传算法有助于全局优化,在噪声环境下具有良好的结果,支持多目标优化。分别使用高斯、梯形和三角形隶属函数计算熵和寻找适应度值。CPU时间、均方根误差、灵敏度、特异性和准确性分别使用三个隶属函数在阈值水平2、3、4、5、7和9计算。以核磁共振成像图像为例,分析了该方法的应用结果。实验结果证明了该方法的有效性和高效性。
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Medical Image Thresholding Using Genetic Algorithm and Fuzzy Membership Functions
Thresholding is one of the important steps in image analysis process and used extensively in different image processing techniques. Medical image segmentation plays a very important role in surgery planning, identification of tumours, diagnosis of organs, etc. In this article, a novel approach for medical image segmentation is proposed using a hybrid technique of genetic algorithm and fuzzy logic. Fuzzy logic can handle uncertain and imprecise information. Genetic algorithms help in global optimization, gives good results in noisy environments and supports multi-objective optimization. Gaussian, trapezoidal and triangular membership functions are used separately for calculating the entropy and finding the fitness value. CPU time, Root Mean Square Error, sensitivity, specificity, and accuracy are calculated using the three membership functions separately at threshold levels 2, 3, 4, 5, 7 and 9. MRI images are considered for applying the proposed method and the results are analysed. The experimental results obtained prove the effectiveness and efficiency of the proposed method.
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