论文标题

k-shot对比度学习视觉特征和多个实例增强

K-Shot Contrastive Learning of Visual Features with Multiple Instance Augmentations

论文作者

Xu, Haohang, Xiong, Hongkai, Qi, Guo-Jun

论文摘要

在本文中,我们通过应用多个增强来调查单个实例中的样本变化,提出了视觉特征的$ k $ shot对比度学习(KSCL)。它的目的是通过学习判别特征来结合实体歧视的优势,以区分不同的实例,以及通过将查询与增强样品变体相匹配,而不是实例。特别是对于每个实例,它构建了一个实例子空间,以建模如何将$ k $ shot增强物中的重要因素组合在一起以形成增强的变体。给定查询,然后通过将查询投影到其子空间以预测正实例类,然后检索最相关的实例变体。这概括了现有的对比学习,可以看作是一种特殊的单次案例。执行特征值分解以配置实例子空间,并且可以通过可区分的子空间配置端对端训练嵌入网络。实验结果表明,所提出的$ K $ - 拍摄对比度学习的表现优于最先进的无监督方法。

In this paper, we propose the $K$-Shot Contrastive Learning (KSCL) of visual features by applying multiple augmentations to investigate the sample variations within individual instances. It aims to combine the advantages of inter-instance discrimination by learning discriminative features to distinguish between different instances, as well as intra-instance variations by matching queries against the variants of augmented samples over instances. Particularly, for each instance, it constructs an instance subspace to model the configuration of how the significant factors of variations in $K$-shot augmentations can be combined to form the variants of augmentations. Given a query, the most relevant variant of instances is then retrieved by projecting the query onto their subspaces to predict the positive instance class. This generalizes the existing contrastive learning that can be viewed as a special one-shot case. An eigenvalue decomposition is performed to configure instance subspaces, and the embedding network can be trained end-to-end through the differentiable subspace configuration. Experiment results demonstrate the proposed $K$-shot contrastive learning achieves superior performances to the state-of-the-art unsupervised methods.

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