Conference Proceedings

Rethinking Generalization in Few-Shot Classification

M Hiller, R Ma, M Harandi, T Drummond

Advances in Neural Information Processing Systems | Published : 2022

Abstract

Single image-level annotations only correctly describe an often small subset of an image's content, particularly when complex real-world scenes are depicted. While this might be acceptable in many classification scenarios, it poses a significant challenge for applications where the set of classes differs significantly between training and test time. In this paper, we take a closer look at the implications in the context of few-shot learning. Splitting the input samples into patches and encoding these via the help of Vision Transformers allows us to establish semantic correspondences between local regions across images and independent of their respective class. The most informative patch embe..

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