Few-shot classification is a challenging problem due to the uncertainty caused by using few labelled samples. In the past few years, many methods have been proposed with the common aim of transferring knowledge acquired on a previously solved task, what is often achieved by using a pretrained feature extractor. Following this vein, in this paper we propose a novel transfer-based method which aims at processing the feature vectors so that they become closer to Gaussian-like distributions, resulting in increased accuracy. In the case of transductive few-shot learning where unlabelled test samples are available during training, we also introduce an optimal-transport inspired algorithm to boost even further the achieved performance. Using standardized vision benchmarks, we show the ability of the proposed methodology to achieve state-of-the-art accuracy with various datasets, backbone architectures and few-shot settings.
翻译:由于使用少数贴标签的样本造成的不确定性,少发的分类是一个具有挑战性的问题。在过去几年中,提出了许多方法,共同的目的是转让在以前解决的任务上获得的知识,通常通过使用预先训练的特征提取器实现。根据这种思路,我们在本文件中提议一种新的基于转让的方法,目的是处理特性矢量,使其更接近高斯式的分布,从而提高准确性。在传输短发学习中,在培训期间提供了未贴标签的测试样本时,我们还采用了一种最优化的交通激励算法,以进一步提高已经实现的绩效。我们使用标准化的愿景基准,展示了拟议方法在各种数据集、主干结构以及几发环境中实现最新准确性的能力。