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Breadcrumbs: Adversarial Class-Balanced Sampling for Long-tailed Recognition (2105.00127v1)

Published 1 May 2021 in cs.CV

Abstract: The problem of long-tailed recognition, where the number of examples per class is highly unbalanced, is considered. While training with class-balanced sampling has been shown effective for this problem, it is known to over-fit to few-shot classes. It is hypothesized that this is due to the repeated sampling of examples and can be addressed by feature space augmentation. A new feature augmentation strategy, EMANATE, based on back-tracking of features across epochs during training, is proposed. It is shown that, unlike class-balanced sampling, this is an adversarial augmentation strategy. A new sampling procedure, Breadcrumb, is then introduced to implement adversarial class-balanced sampling without extra computation. Experiments on three popular long-tailed recognition datasets show that Breadcrumb training produces classifiers that outperform existing solutions to the problem.

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Authors (5)
  1. Bo Liu (484 papers)
  2. Haoxiang Li (61 papers)
  3. Hao Kang (33 papers)
  4. Gang Hua (101 papers)
  5. Nuno Vasconcelos (79 papers)
Citations (9)

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