ResFCNET: A Skin Lesion Segmentation Method Based on a Deep Residual Fully Convolutional Neural Network

Mustapha Adamu Mohammed, Obeng Bismark, S. Alornyo, M. Asante, Bernard Obo Essah
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Abstract

Melanoma, a high-level variant of skin cancer is very difficult to distinguish from other skin cancer types in patients. The presence of large variety of sizes of lesions, fuzzy boundaries and irregular shaped nature, with low contrast between skin lesions and surrounding fresh areas makes it clinically difficult to detect and treat melanoma. In this paper, we propose Residual Full Convolutional Network (ResFCNET) skin lesion recognition model that combines residual learning and full convolutional network to perform semantic segmentation of skin lesion. Based on secondary feature extraction and classification, experiment was done to verify the effectiveness of our model using ISBI 2016 and ISBI 2017 dataset. Results showed that residual convolution neural network obtain high precision classification. This technique is novel and provides a compelling insight for medical image segmentation.
基于深度残差全卷积神经网络的皮肤病灶分割方法
黑色素瘤是皮肤癌的一种高级变体,很难与患者的其他皮肤癌类型区分开来。黑素瘤的病变大小多样,边界模糊,形状不规则,皮肤病变与周围新鲜区域对比低,给临床发现和治疗带来困难。本文提出了残差全卷积网络(ResFCNET)皮肤病变识别模型,该模型结合残差学习和全卷积网络对皮肤病变进行语义分割。在二次特征提取和分类的基础上,利用ISBI 2016和ISBI 2017数据集对模型的有效性进行了实验验证。结果表明,残差卷积神经网络具有较高的分类精度。该技术新颖,为医学图像分割提供了令人信服的见解。
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