少镜头学习的转换情景自适应度量

Limeng Qiao, Yemin Shi, Jia Li, Yaowei Wang, Tiejun Huang, Yonghong Tian
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引用次数: 158

摘要

最近元学习范式中出现了“少量学习”(few -shot learning),它旨在从极少量的新类中快速提取新概念。然而,如何学习具有适应严重有限数据的特定任务能力的可泛化分类器的关键挑战仍然存在于该领域。为此,我们通过将元学习范式与深度度量学习和转导推理相结合,提出了一个用于小镜头学习的转导情景自适应度量(Transductive episodicwise Adaptive Metric, TEAM)框架。通过探索每个任务中的配对约束和正则化先验,我们将自适应过程明确地表述为标准的半确定规划问题。通过在运行中使用其封闭形式的解决方案解决问题,我们的方法有效地为每个任务定制了一个情节明智的度量,以将所有特征从共享的任务不可知嵌入空间适应为更具判别性的任务特定度量空间。此外,我们进一步利用基于注意力的双向相似性策略来提取查询和原型之间更健壮的关系。在三个基准数据集上的大量实验表明,我们的框架优于其他现有方法,并在少数几个文献中达到了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transductive Episodic-Wise Adaptive Metric for Few-Shot Learning
Few-shot learning, which aims at extracting new concepts rapidly from extremely few examples of novel classes, has been featured into the meta-learning paradigm recently. Yet, the key challenge of how to learn a generalizable classifier with the capability of adapting to specific tasks with severely limited data still remains in this domain. To this end, we propose a Transductive Episodic-wise Adaptive Metric (TEAM) framework for few-shot learning, by integrating the meta-learning paradigm with both deep metric learning and transductive inference. With exploring the pairwise constraints and regularization prior within each task, we explicitly formulate the adaptation procedure into a standard semi-definite programming problem. By solving the problem with its closed-form solution on the fly with the setup of transduction, our approach efficiently tailors an episodic-wise metric for each task to adapt all features from a shared task-agnostic embedding space into a more discriminative task-specific metric space. Moreover, we further leverage an attention-based bi-directional similarity strategy for extracting the more robust relationship between queries and prototypes. Extensive experiments on three benchmark datasets show that our framework is superior to other existing approaches and achieves the state-of-the-art performance in the few-shot literature.
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