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Papers/Rethinking Class-Balanced Methods for Long-Tailed Visual R...

Rethinking Class-Balanced Methods for Long-Tailed Visual Recognition from a Domain Adaptation Perspective

Muhammad Abdullah Jamal, Matthew Brown, Ming-Hsuan Yang, Liqiang Wang, Boqing Gong

2020-03-24CVPR 2020 6Meta-LearningLong-tail LearningDomain Adaptation
PaperPDFCode(official)

Abstract

Object frequency in the real world often follows a power law, leading to a mismatch between datasets with long-tailed class distributions seen by a machine learning model and our expectation of the model to perform well on all classes. We analyze this mismatch from a domain adaptation point of view. First of all, we connect existing class-balanced methods for long-tailed classification to target shift, a well-studied scenario in domain adaptation. The connection reveals that these methods implicitly assume that the training data and test data share the same class-conditioned distribution, which does not hold in general and especially for the tail classes. While a head class could contain abundant and diverse training examples that well represent the expected data at inference time, the tail classes are often short of representative training data. To this end, we propose to augment the classic class-balanced learning by explicitly estimating the differences between the class-conditioned distributions with a meta-learning approach. We validate our approach with six benchmark datasets and three loss functions.

Results

TaskDatasetMetricValueModel
Image ClassificationPlaces-LTTop-1 Accuracy30.8Domain Adaptation
Image ClassificationImageNet-LTTop-1 Accuracy29.9Domain Adaptation
Few-Shot Image ClassificationPlaces-LTTop-1 Accuracy30.8Domain Adaptation
Few-Shot Image ClassificationImageNet-LTTop-1 Accuracy29.9Domain Adaptation
Generalized Few-Shot ClassificationPlaces-LTTop-1 Accuracy30.8Domain Adaptation
Generalized Few-Shot ClassificationImageNet-LTTop-1 Accuracy29.9Domain Adaptation
Long-tail LearningPlaces-LTTop-1 Accuracy30.8Domain Adaptation
Long-tail LearningImageNet-LTTop-1 Accuracy29.9Domain Adaptation
Generalized Few-Shot LearningPlaces-LTTop-1 Accuracy30.8Domain Adaptation
Generalized Few-Shot LearningImageNet-LTTop-1 Accuracy29.9Domain Adaptation

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