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Hill Climbing Optimization and Fuzzy C-Means Clustering for Melanoma Skin Cancer Identification and Segmentation

机译:爬山优化和模糊C均值聚类法用于黑色素瘤皮肤癌的识别和细分

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Even though melanoma is not common as other skin cancers, it is one of the most dangerous skin cancer that grow any part of the skin such as chest, back, face, neck and legs. According to World Health Organization, the extreme sun UV radiation causes about 60,000 early demises every year worldwide. More than 80% of these deaths accounted for melanoma cancer. The proposed work explains the detection and segmentation of Melanoma skin cancer using hill climbing and FCM combined process. The process initiated with the transformation of image from RGB to CIELab space. The 3D histogram of CIELab image provides seeds for FCM. They act as initial clusters for the segmentation process. The experimental results of the proposed approach clearly illustrates that outcome of the process mainly depends on the number initial seeds.
机译:尽管黑色素瘤不像其他皮肤癌那样常见,但它是最危险的皮肤癌之一,它会在皮肤的任何部位(如胸部,背部,面部,颈部和腿部)生长。根据世界卫生组织的资料,全世界每年极端的紫外线辐射都会导致约60,000例早期死亡。这些死亡中有80%以上是黑色素瘤癌症。拟议的工作解释了使用爬山和FCM组合过程对黑色素瘤皮肤癌的检测和分割。该过程始于将图像从RGB转换为CIELab空间。 CIELab图像的3D直方图为FCM提供了种子。它们充当细分过程的初始集群。提出的方法的实验结果清楚地说明了该过程的结果主要取决于初始种子的数量。

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