Skin Lesion Classification based on Deep Convolutional Neural Network

Youteng Wu, Agyenta Charity Lariba, Haotian Chen, Haiyan Zhao
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引用次数: 6

Abstract

Skin cancer is one of the most common cancers, and its early detection has a huge impact on its outcomes. In this paper, the deep convolutional neural network is improved with the idea of transfer learning to classify 7 types of skin lesions that are from ISIC 2017 HAM10000 dataset. First, the skin lesion images are trained with a 3-layer convolutional neural network after preprocessing. Then for InceptionV3, ResNet50 and DenseNet201, remove the output layer of each original network, add new pooling layer and full connection layers to different networks respectively. After that, combine some of the convolution layers and pooling layers with the new pooling and full connection layers to form three new improved models, based on the original deep conventional networks. Finally, the training parameters which are from ImageNet network are fine-tuned on new improved InceptionV3, ResNet50 and DenseNet201 to finish the classification. The experimental images' size is 224* 224, and the experiments turn out that three improved networks get better results, and the improved ResNet50 gets the best which accuracy is 86.69%. Its accuracy is 3% higher than the comparable other methods.
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基于深度卷积神经网络的皮肤病变分类
皮肤癌是最常见的癌症之一,它的早期发现对其结果有巨大的影响。本文采用迁移学习的思想对深度卷积神经网络进行改进,对来自ISIC 2017 HAM10000数据集的7种皮肤病变进行分类。首先,用预处理后的3层卷积神经网络对皮肤病变图像进行训练。然后对于InceptionV3, ResNet50和DenseNet201,移除每个原始网络的输出层,分别在不同的网络中增加新的池化层和全连接层。之后,将部分卷积层和池化层与新的池化层和全连接层结合,在原有深度常规网络的基础上,形成三个新的改进模型。最后,对来自ImageNet网络的训练参数在新改进的InceptionV3、ResNet50和DenseNet201上进行微调,完成分类。实验图像的尺寸为224* 224,实验结果表明,三种改进后的网络得到了更好的结果,其中改进后的ResNet50得到了最好的结果,准确率为86.69%。其准确度比其他可比较的方法高3%。
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