In this paper, we look at the problem of few-shot classification that aims to learn a classifier for previously unseen classes and domains from few labeled samples. Recent methods use adaptation networks for aligning their features to new domains or select the relevant features from multiple domain-specific feature extractors. In this work, we propose to learn a single set of universal deep representations by distilling knowledge of multiple separately trained networks after co-aligning their features with the help of adapters and centered kernel alignment. We show that the universal representations can be further refined for previously unseen domains by an efficient adaptation step in a similar spirit to distance learning methods. We rigorously evaluate our model in the recent Meta-Dataset benchmark and demonstrate that it significantly outperforms the previous methods while being more efficient. Our code will be available at https://github.com/VICO-UoE/URL.
翻译:在本文中,我们审视了旨在从少数标签样本中学习先前看不见的类别和域名分类器的微小分类问题。最近的方法利用适应网络将其特征与新域相匹配,或从多个特定域的特征提取器中选择相关特征。在这项工作中,我们提议通过在适应器和核心内核对齐帮助下对多个分别培训的网络进行组合之后,通过提炼其特征的知识,来学习一套单一的通用深度表达法。我们表明,在与远程学习方法类似的精神下,通过高效的适应步骤,可以进一步改进以往未知域名的普遍表述法。我们严格评估了最近的Meta-Dataset基准中的模型,并表明该模型在提高效率的同时大大优于以往的方法。我们的代码将在https://github.com/VICO-UoE/URL上查阅。