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Melanoma Classification in Dermoscopy Images via Ensemble Learning on Deep Neural Network

机译:黑色素瘤分类在Dermoscopy图像中通过深度神经网络的集合学习

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Auotmatic melanoma classification in dermoscopy images is a very important task, which can help improve diagnostic accuracy and reduce mortality. Deep convolutional neural network (DCNN) has developed rapidly in recent years, but it is still a challenging task due to the intra-class variation and inter-class similarity of melanoma. We proposed a novel neural network integration model, which is composed of three parts: First, we use U-net segmentation network to generate masks and use the masks to crop original images; Second, we use five state-of-the-art DCNNs to extract features of cropped images, and add the squeeze-excitation block (SE block) to emphasize useful features; Finally, we construct a new neural network with local connection to integrate the classification results, extract features of different class of results, and integrate the results of each class separately. Local connection can integrate each class separately, maximizing the advantages of different networks in various classes. We evaluate our model on ISIC 2017 challenge dataset, and the result shows that our method has better performance compared with the existing methods.
机译:Dermoscopy图像中的Auotmatic Selanoma分类是一个非常重要的任务,这有​​助于提高诊断准确性并降低死亡率。近年来,深度卷积神经网络(DCNN)已迅速发展,但由于阶级内变异和黑素瘤的阶级相似性,仍然是一个具有挑战性的任务。我们提出了一种新型神经网络集成模型,由三部分组成:首先,我们使用U-Net分段网络生成掩码并使用掩模来裁剪原始图像;其次,我们使用五个最先进的DCNN来提取裁剪图像的特征,并添加挤压激励块(SE块)以强调有用的功能;最后,我们用本地连接构建一个新的神经网络,集成分类结果,提取不同类型结果的特征,并单独集成每个类的结果。本地连接可以单独集成每个类,最大化不同网络在各种类中的优势。我们评估我们的ISIC 2017挑战数据集的模型,结果表明,与现有方法相比,我们的方法具有更好的性能。

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