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An Efficient Skin Cancer Diagnostic System Using Bendlet Transform and Support Vector Machine

机译:使用前沿变换和支持向量机的高效皮肤癌症诊断系统

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Skin is the outermost and largest organ of the human body that protects us from the external agents. Among the various types of diseases affecting the skin, melanoma (skin cancer) is the most dangerous and deadliest disease. Though it is one of the dangerous forms of cancer, it has a high survival rate if and only if it is diagnosed at the earliest. In this study, skin cancer classification (SCC) system is developed using dermoscopic images. It is considered as a classification problem with the help of Bendlet Transform (BT) as features and Support Vector Machine (SVM) as a classifier. First, the unwanted information’s such as hair and noises are removed using median filtering approach. Then, directional representation based feature extraction system that precisely classifies curvature, location and orientation is employed. Finally, two SVM classifiers are designed for the classification. The performance of the SCC system based on Bendlet is superior to other image representation systems such as Wavelets, Curvelets, Contourlets and Shearlets.
机译:皮肤是人体的最外层和最大的器官,可保护我们免受外部药剂。在影响皮肤的各种类型的疾病中,黑素瘤(皮肤癌)是最危险和最致命的疾病。虽然它是癌症的危险形式之一,但如果才有很高的存活率,只有在最早被诊断。在本研究中,使用Dermoscopic图像开发皮肤癌分类(SCC)系统。借助于Bendlet变换(BT)作为特征,支持向量机(SVM)作为分类器的帮助。首先,使用中值过滤方法除去不需要的信息,例如头发和噪声。然后,采用基于方向表示的特征提取系统,其精确地对曲率,位置和方向进行了分类。最后,为分类设计了两个SVM分类器。基于Bendlet的SCC系统的性能优于其他图像表示系统,例如小波,曲线,轮廓件和沉船。

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