Efficient Brain and Liver Tumor Segmentation using Seagull Optimization Algorithm based Super Pixel Fuzzy Clustering

S. Devi, E. G. Manoharan
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Abstract

Now a days, medical image segmentation has been utilized in many applications with the consideration of computer aided diagnosis system. From that, brain tumour segmentation with MRI image play a main role in disease prediction. Hence, in this paper Seagull Optimization Algorithm Based Super Pixel Fuzzy Clustering (SOA-SFC)is designed for segmentation. The proposed segmentation process is designed with the combination of Super Pixel Fuzzy Clustering and Seagull Optimization Algorithm. In the Super Pixel Fuzzy Clustering, the efficient cluster center is chosen with the assistance of Seagull Optimization Algorithm. Initially, the Super Pixel Fuzzy Clustering objective function is considered with the consideration of fuzzy information extracted from the images of brain. After that, Seagull Optimization Algorithm is utilized towards optimize the cluster center in addition fuzzifier from the clustering method. The projectedtechniquecan be implemented in the MATLAB in additionpresentationiscomputed. The projectedtechniquecan becontrasted with the existing techniqueslike fuzzy c means clustering, k means clustering methods and Chimp Optimization Algorithm Based Type-2 Intuitionistic Fuzzy C-Means Clustering (COA-T2FCM). The projected method can be validated by performance metrices such as Dice similarity coefficient (DSC), Jaccard Similarity Index (JSI), accuracy, sensitivity, and specificity.
基于超像素模糊聚类的海鸥优化算法高效脑和肝肿瘤分割
目前,医学图像分割在计算机辅助诊断系统中得到了广泛的应用。由此可见,MRI图像对脑肿瘤的分割在疾病预测中起着重要的作用。为此,本文设计了基于海鸥优化算法的超像素模糊聚类(SOA-SFC)进行分割。采用超像素模糊聚类和海鸥优化算法相结合的方法设计了分割过程。在超像素模糊聚类中,利用海鸥优化算法选择有效的聚类中心。首先,考虑从大脑图像中提取的模糊信息,考虑超像素模糊聚类目标函数。然后利用海鸥优化算法对聚类中心进行优化,并加入聚类方法中的模糊化。该方案可在MATLAB中实现,并给出了相应的计算结果。该方法可以与现有的模糊c均值聚类、k均值聚类和基于黑猩猩优化算法的2型直觉模糊c均值聚类(COA-T2FCM)进行对比。投影方法可以通过骰子相似系数(DSC)、JSI (JSI)、准确性、灵敏度和特异性等性能指标进行验证。
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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