论文标题
通过元学习代表性嵌入,从皮肤镜图像中对皮肤病变的几乎没有射击分类
Few-Shot Classification of Skin Lesions from Dermoscopic Images by Meta-Learning Representative Embeddings
论文作者
论文摘要
诊断稀有疾病和新型疾病的注释图像和地面真相很少。考虑到少数受影响的患者人群和有限的临床专业知识来注释图像,这将占上风。此外,皮肤病变和其他疾病分类数据集中经常发生的长尾巴分布会导致传统的训练方法导致由于有偏见的阶级先验而导致概括不良。几乎没有学习的学习和一般的元学习,旨在通过在低数据制度中表现良好来克服这些问题。本文着重于改善皮肤镜图像分类的元学习。具体而言,我们在元训练集上提出了一种基线监督方法,该方法允许网络学习图像的高度代表性且可推广的功能嵌入,这些功能嵌入图像,这些嵌入方式很容易转移到新的几次学习任务中。我们遵循文献中先前的一些工作,认为代表性特征嵌入可以比复杂的元学习算法更有效。我们从经验上证明了所提出的元训练方法对皮肤镜图像学习嵌入的功效,并表明即使在这些表示上训练的简单线性分类器也足以超越某些通常的元学习方法。
Annotated images and ground truth for the diagnosis of rare and novel diseases are scarce. This is expected to prevail, considering the small number of affected patient population and limited clinical expertise to annotate images. Further, the frequently occurring long-tailed class distributions in skin lesion and other disease classification datasets cause conventional training approaches to lead to poor generalization due to biased class priors. Few-shot learning, and meta-learning in general, aim to overcome these issues by aiming to perform well in low data regimes. This paper focuses on improving meta-learning for the classification of dermoscopic images. Specifically, we propose a baseline supervised method on the meta-training set that allows a network to learn highly representative and generalizable feature embeddings for images, that are readily transferable to new few-shot learning tasks. We follow some of the previous work in literature that posit that a representative feature embedding can be more effective than complex meta-learning algorithms. We empirically prove the efficacy of the proposed meta-training method on dermoscopic images for learning embeddings, and show that even simple linear classifiers trained atop these representations suffice to outperform some of the usual meta-learning methods.