Convolutional neural networks (CNNs) have achieved great success in skin lesion classification. A balanced dataset is required to train a good model. However, due to the appearance of different skin lesions in practice, severe or even deadliest skin lesion types (e.g., melanoma) naturally have quite small amount represented in a dataset. In that, classification performance degradation occurs widely, it is significantly important to have CNNs that work well on class imbalanced skin lesion image dataset. In this paper, we propose SuperCon, a two-stage training strategy to overcome the class imbalance problem on skin lesion classification. It contains two stages: (i) representation training that tries to learn a feature representation that closely aligned among intra-classes and distantly apart from inter-classes, and (ii) classifier fine-tuning that aims to learn a classifier that correctly predict the label based on the learnt representations. In the experimental evaluation, extensive comparisons have been made among our approach and other existing approaches on skin lesion benchmark datasets. The results show that our two-stage training strategy effectively addresses the class imbalance classification problem, and significantly improves existing works in terms of F1-score and AUC score, resulting in state-of-the-art performance.
翻译:在皮肤损伤分类方面,遗传神经网络(CNNs)在皮肤损伤分类方面取得了巨大成功,需要有一个平衡的数据集来培养一个良好的模型,然而,由于实践中不同皮肤损伤的出现,皮肤损伤类型(例如,乳腺瘤)自然具有相当小的数量,因此,在数据集中,分类性能退化现象非常普遍,因此非常重要的是,有CNN在分类不平衡的皮肤损伤图像数据集方面效果良好。在本文中,我们提议SeperCon,这是一个两阶段的培训战略,以克服皮肤损伤分类方面的阶级不平衡问题。它包含两个阶段:(一) 代表性培训,试图学习一种与阶级内部密切吻合、远离阶级之间的特征代表,以及(二) 分类微调,目的是学习一个精细的分类,以正确预测根据所学的表述得出的标签。在实验性评估中,我们的方法和其他现有的皮肤损伤基准数据集方法进行了广泛的比较。结果显示,我们的两阶段培训战略有效地解决了阶级失衡分类问题,从而大大改进了目前的工作成绩。