论文标题
减轻跨熵损失与发作训练之间的不相容性,以进行几次皮肤疾病分类
Alleviating the Incompatibility between Cross Entropy Loss and Episode Training for Few-shot Skin Disease Classification
论文作者
论文摘要
来自图像的皮肤病分类对于皮肤病学诊断至关重要。但是,识别皮肤病变涉及大小,颜色,形状和质地的各个方面。更糟糕的是,许多类别仅包含很少的样本,对传统的机器学习算法甚至人类专家构成了巨大挑战。受到自然图像分类中几次学习(FSL)最近成功的启发,我们建议将FSL应用于皮肤病识别,以解决训练样本问题的极端稀缺性。但是,将FSL直接应用于此任务并不能很好地奏效,我们发现问题可以在很大程度上归因于跨熵(CE)和情节训练之间的不兼容,这两者都在FSL中使用。基于详细的分析,我们提出了相关性(QR)的损失,该损失证明在发作训练下优于CE,并且与最近提出的相互信息估计密切相关。此外,我们通过一种新型的自适应硬余量策略进一步加强了提出的QR损失。全面的实验验证了拟议的FSL方案的有效性,并用一些标记的样品诊断稀有皮肤疾病的可能性。
Skin disease classification from images is crucial to dermatological diagnosis. However, identifying skin lesions involves a variety of aspects in terms of size, color, shape, and texture. To make matters worse, many categories only contain very few samples, posing great challenges to conventional machine learning algorithms and even human experts. Inspired by the recent success of Few-Shot Learning (FSL) in natural image classification, we propose to apply FSL to skin disease identification to address the extreme scarcity of training sample problem. However, directly applying FSL to this task does not work well in practice, and we find that the problem can be largely attributed to the incompatibility between Cross Entropy (CE) and episode training, which are both commonly used in FSL. Based on a detailed analysis, we propose the Query-Relative (QR) loss, which proves superior to CE under episode training and is closely related to recently proposed mutual information estimation. Moreover, we further strengthen the proposed QR loss with a novel adaptive hard margin strategy. Comprehensive experiments validate the effectiveness of the proposed FSL scheme and the possibility to diagnosis rare skin disease with a few labeled samples.