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arxiv: 2204.09234 · v2 · pith:S3OJMTK4new · submitted 2022-04-20 · 💻 cs.CV

Solving The Long-Tailed Problem via Intra- and Inter-Category Balance

classification 💻 cs.CV
keywords long-tailedbalanceapproachesdatasetsinter-categoryproblemboundarycategory
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Benchmark datasets for visual recognition assume that data is uniformly distributed, while real-world datasets obey long-tailed distribution. Current approaches handle the long-tailed problem to transform the long-tailed dataset to uniform distribution by re-sampling or re-weighting strategies. These approaches emphasize the tail classes but ignore the hard examples in head classes, which result in performance degradation. In this paper, we propose a novel gradient harmonized mechanism with category-wise adaptive precision to decouple the difficulty and sample size imbalance in the long-tailed problem, which are correspondingly solved via intra- and inter-category balance strategies. Specifically, intra-category balance focuses on the hard examples in each category to optimize the decision boundary, while inter-category balance aims to correct the shift of decision boundary by taking each category as a unit. Extensive experiments demonstrate that the proposed method consistently outperforms other approaches on all the datasets.

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