Authors
Haohang Xu, Hongkai Xiong, Guo-Jun Qi
Publication date
2021/5/21
Journal
IEEE Transactions on Pattern Analysis and Machine Intelligence
Volume
44
Issue
11
Pages
8694-8700
Publisher
IEEE
Description
In this paper, we propose the -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 -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 …
Total citations
202220232024352
Scholar articles
H Xu, H Xiong, GJ Qi - IEEE Transactions on Pattern Analysis and Machine …, 2021