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Few-Shot Metric Learning: Online Adaptation of Embedding for Retrieval

Title
Few-Shot Metric Learning: Online Adaptation of Embedding for Retrieval
Authors
Jung, DeunsolKang, DahyunKwak, SuhaCho, Minsu
Date Issued
2022-12
Publisher
Asian Conference on Computer Vision
Abstract
Metric learning aims to build a distance metric typically by learning an effective embedding function that maps similar objects into nearby points in its embedding space. Despite recent advances in deep metric learning, it remains challenging for the learned metric to generalize to unseen classes with a substantial domain gap. To tackle the issue, we explore a new problem of few-shot metric learning that aims to adapt the embedding function to the target domain with only a few annotated data. We introduce three few-shot metric learning baselines and propose the Channel-Rectifier Meta-Learning (CRML), which effectively adapts the metric space online by adjusting channels of intermediate layers. Experimental analyses on miniImageNet, CUB-200-2011, MPII, as well as a new dataset, miniDeepFashion, demonstrate that our method consistently improves the learned metric by adapting it to target classes and achieves a greater gain in image retrieval when the domain gap from the source classes is larger.
URI
https://oasis.postech.ac.kr/handle/2014.oak/114891
ISSN
0302-9743
Article Type
Conference
Citation
Asian Conference on Computer Vision 2022, page. 54 - 70, 2022-12
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