Rectifying the Shortcut Learning of Background for Few-Shot Learning
About
The category gap between training and evaluation has been characterised as one of the main obstacles to the success of Few-Shot Learning (FSL). In this paper, we for the first time empirically identify image background, common in realistic images, as a shortcut knowledge helpful for in-class classification but ungeneralizable beyond training categories in FSL. A novel framework, COSOC, is designed to tackle this problem by extracting foreground objects in images at both training and evaluation without any extra supervision. Extensive experiments carried on inductive FSL tasks demonstrate the effectiveness of our approaches.
Xu Luo, Longhui Wei, Liangjian Wen, Jinrong Yang, Lingxi Xie, Zenglin Xu, Qi Tian• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Few-shot classification | tieredImageNet (test) | -- | 282 | |
| 5-way Few-shot Classification | MiniImagenet | Accuracy (5-shot)85.16 | 150 | |
| 5-way Few-shot Classification | Mini-Imagenet (test) | 1-shot Accuracy69.28 | 141 | |
| 5-way 5-shot Classification | miniImageNet (test) | Accuracy85.16 | 56 | |
| 5-way Few-shot Classification | tieredImageNet | Accuracy (1-shot)73.57 | 49 | |
| 5-way 1-shot Classification | Mini-Imagenet (test) | Accuracy69.28 | 43 | |
| 5-way Few-shot Classification | tiered-ImageNet (test) | 1-shot Acc73.57 | 33 | |
| Image Classification | tiered-ImageNet | 1-Shot Acc73.57 | 25 | |
| Image Classification | MiniImagenet | 1-Shot Accuracy69.28 | 16 |
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