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Multi-Model Deep Neural Network based Features Extraction and Optimal Selection Approach for Skin Lesion Classification

机译:基于多模型深度神经网络的皮肤损伤分类特征提取和最优选择方法

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Melanoma skin cancer is one of the most deadly forms of cancer which are responsible for thousands of deaths. The manual process of melanoma diagnosis is a time taking and difficult task, therefore researchers introduced several computerized methods for recognition. Through computational methods, improves the accuracy of diagnostics process which is helpful for dermatologists. In this paper, we proposed an automated system for skin lesion classification through transfer learning based deep neural network (DCNN) features extraction and kurtosis controlled principle component (KcPCA) based optimal features selection. The pre-trained ResNet deep neural network such as RESNET-50 and RESNET-101 are utilized for features extraction. Then fused their information and selects the best features which later fed to supervised learning method such as SVM of radial basis function (RBF) for classification. Three datasets name HAM10000, ISBI 2017, and ISBI 2016 are utilized for experimental results and achieved an accuracy of 89.8%, 95.60%, and 90.20%, respectively. The overall results show that the performance of the proposed system is reliable as compared to existing techniques.
机译:黑色素瘤皮肤癌是最致命的癌症之一,可导致数千人死亡。黑色素瘤诊断的手动过程是一项耗时且艰巨的任务,因此研究人员介绍了几种用于识别的计算机化方法。通过计算方法,提高诊断过程的准确性,这对皮肤科医生很有帮助。在本文中,我们提出了一种基于转移学习的基于深度神经网络(DCNN)特征提取和基于峰度控制主成分(KcPCA)的最佳特征选择的皮肤病变分类自动化系统。预训练的ResNet深度神经网络(如RESNET-50和RESNET-101)用于特征提取。然后融合他们的信息,并选择最佳特征,然后将其引入有监督学习方法中,例如径向基函数(RBF)的SVM进行分类。实验结果使用了三个数据集HAM10000,ISBI 2017和ISBI 2016,其准确度分别为89.8%,95.60%和90.20%。总体结果表明,与现有技术相比,该系统的性能可靠。

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