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Segmentation and Border Detection of Melanoma Lesions Using Convolutional Neural Network and SVM

机译:使用卷积神经网络和SVM的黑素瘤病变的分割和边框检测

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Melanoma is one of the most lethal forms of skin cancer caused when skin is exposed to intense UV rays. Estimates suggest that the deaths tolls are more than 50,000 with 3 million and more reports of it yearly. However, early diagnosis of malignant melanoma significantly curbs the mortality rate. Several computer-aided diagnosis systems have been proposed in assisting the detection of malignant melanoma in its earlier stages. These systems help in early detection and earlier diagnosis of many symptoms, which results in better and accurate treatment. However, the challenge starts from the first step of implementation of such systems, which is melanoma lesion detection in the image. In this paper, the problem of automatic detection of melanoma lesion on skin images is presented based on the concept of deep learning. The experiments have been performed using Convolutional Neural Networks (CNNs) with training input size of 15 x 15 and 50 x 50. The result of the study shows that deep learning using CNN is able to detect the melanoma lesion efficiently. The best performance has been achieved using CNN with 15x15 training input size. The performances obtained using this network is Jaccard index (0.90), Accuracy (95.85%), Precision (94.31%), Recall (94.31%), and F-value (94.14%) for the best performance.
机译:黑色素瘤是当皮肤暴露于激烈的紫外线时引起的最致命形式的皮肤癌之一。估计表明,死亡人数超过50,000,每年有300万和更多的报告。然而,早期的恶性黑素瘤的诊断显着抑制了死亡率。已经提出了几种计算机辅助诊断系统,用于促进其早期阶段的恶性黑素瘤检测。这些系统有助于早期检测和早期诊断许多症状,导致治疗更好和准确。然而,挑战从这种系统的第一步开始,这是图像中的黑色素瘤病灶检测。本文基于深度学习概念,提出了对皮肤图像黑色素瘤病变的自动检测问题。已经使用卷积神经网络(CNN)进行了实验,训练输入大小为15×15和50×50.研究结果表明,使用CNN的深度学习能够有效地检测黑色素瘤病变。使用CNN具有15x15培训输入大小的CNN实现了最佳性能。使用此网络获得的性能是Jaccard指数(0.90),精度(95.85%),精度(94.31%),召回(94.31%)和F值(94.14%),以获得最佳性能。

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