Few-Shot transfer learning has become a major focus of research as it allows recognition of new classes with limited labeled data. While it is assumed that train and test data have the same data distribution, this is often not the case in real-world applications. This leads to decreased model transfer effects when the new class distribution differs significantly from the learned classes. Research into Cross-Domain Few-Shot (CDFS) has emerged to address this issue, forming a more challenging and realistic setting. In this survey, we provide a detailed taxonomy of CDFS from the problem setting and corresponding solutions view. We summarise the existing CDFS network architectures and discuss the solution ideas for each direction the taxonomy indicates. Furthermore, we introduce various CDFS downstream applications and outline classification, detection, and segmentation benchmarks and corresponding standards for evaluation. We also discuss the challenges of CDFS research and explore potential directions for future investigation. Through this review, we aim to provide comprehensive guidance on CDFS research, enabling researchers to gain insight into the state-of-the-art while allowing them to build upon existing solutions to develop their own CDFS models.
翻译:少样本迁移学习已成为一项主要的研究重点,因为它允许在有限标记数据的情况下识别新类别。虽然通常假设训练数据和测试数据具有相同的数据分布,但在实际应用中,这通常不是这样。当新类别分布与已学习的类别显著不同时,这会导致模型的转移效果降低。为了解决这个问题,交叉领域少样本(CDFS)的研究呼之欲出,形成了更具挑战性和现实性的设置。在本综述中,我们从问题设置和相应解决方案的视角提供了CDFS的详细分类法。我们总结了现有的CDFS网络架构,并讨论了每个方向的解决方案想法。此外,我们介绍了各种CDFS下游应用,并概述了分类、检测和分割基准以及相应的评估标准。我们还讨论了CDFS研究面临的挑战并探讨了未来研究的潜在方向。通过这篇综述,我们的目标是提供对CDFS研究的全面指导,使研究人员能够了解最新技术并在现有解决方案的基础上开发自己的CDFS模型。