基于深度CNN集合的皮肤病变分类

Sara Atito Ali Ahmed, B. Yanikoglu, Özgü Göksu, E. Aptoula
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引用次数: 7

摘要

当治疗最有可能成功时,早期发现皮肤癌是至关重要的。然而,皮肤病变的诊断是一项非常具有挑战性的任务,因为病变在外观,位置,颜色和大小方面相似。我们使用ISIC2019组织者提供的训练图像,通过融合和微调三个预训练的深度学习架构(Xception, Inception-ResNet-V2和NasNetLarge),提出了一种皮肤病变分类的深度学习方法。此外,对异常值和严重的分类不平衡进行了处理,进一步增强了病变的分类。实验结果表明,该框架取得了与ISIC2019挑战排行榜相当的良好效果。
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Skin Lesion Classification With Deep CNN Ensembles
Early detection of skin cancer is vital when treatment is most likely to be successful. However, diagnosis of skin lesions is a very challenging task due to the similarities between lesions in terms of appearance, location, color, and size. We present a deep learning method for skin lesion classification by fusing and fine-tuning three pre-trained deep learning architectures (Xception, Inception-ResNet-V2, and NasNetLarge) using training images provided by ISIC2019 organizers. Additionally, the outliers and the heavy class imbalance are addressed to further enhance the classification of the lesion. The experimental results show that the proposed framework obtained promising results that are comparable with the ISIC2019 challenge leader board.
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