Few-shot image classification is a challenging problem that aims to achieve the human level of recognition based only on a small number of training images. One main solution to few-shot image classification is deep metric learning. These methods, by classifying unseen samples according to their distances to few seen samples in an embedding space learned by powerful deep neural networks, can avoid overfitting to few training images in few-shot image classification and have achieved the state-of-the-art performance. In this paper, we provide an up-to-date review of deep metric learning methods for few-shot image classification from 2018 to 2022 and categorize them into three groups according to three stages of metric learning, namely learning feature embeddings, learning class representations, and learning distance measures. With this taxonomy, we identify the novelties of different methods and problems they face. We conclude this review with a discussion on current challenges and future trends in few-shot image classification.
翻译:微小的图像分类是一个具有挑战性的问题,其目的在于仅仅在少量培训图像的基础上实现人类的认知水平。微小图像分类的一个主要解决办法是深度的衡量学习。这些方法,通过根据微小图像分类在强大的深神经网络所学的嵌入空间中,根据与少数可见样本的距离,对未见样本进行分类,可以避免在微小图像分类中过度适应少数培训图像,并实现了最新业绩。在本文件中,我们提供了2018-2022年微小图像分类的深入的衡量学习方法的最新审查,并根据三个阶段的衡量学习阶段,即学习地物嵌入、学习班表征和学习远程措施,将其分为三个组。我们通过这种分类,可以确定不同方法和问题面临的新颖之处。我们通过对当前挑战和未来趋势的讨论,在微小图像分类中结束这一审查。