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Papers/Balanced Meta-Softmax for Long-Tailed Visual Recognition

Balanced Meta-Softmax for Long-Tailed Visual Recognition

Jiawei Ren, Cunjun Yu, Shunan Sheng, Xiao Ma, Haiyu Zhao, Shuai Yi, Hongsheng Li

2020-07-21NeurIPS 2020 12Long-tail LearningSemantic SegmentationInstance SegmentationGeneral Classification
PaperPDFCode(official)

Abstract

Deep classifiers have achieved great success in visual recognition. However, real-world data is long-tailed by nature, leading to the mismatch between training and testing distributions. In this paper, we show that the Softmax function, though used in most classification tasks, gives a biased gradient estimation under the long-tailed setup. This paper presents Balanced Softmax, an elegant unbiased extension of Softmax, to accommodate the label distribution shift between training and testing. Theoretically, we derive the generalization bound for multiclass Softmax regression and show our loss minimizes the bound. In addition, we introduce Balanced Meta-Softmax, applying a complementary Meta Sampler to estimate the optimal class sample rate and further improve long-tailed learning. In our experiments, we demonstrate that Balanced Meta-Softmax outperforms state-of-the-art long-tailed classification solutions on both visual recognition and instance segmentation tasks.

Results

TaskDatasetMetricValueModel
Image ClassificationPlaces-LTTop-1 Accuracy38.7BALMS
Image ClassificationCIFAR-10-LT (ρ=10)Error Rate8.7Balanced Softmax (BALMS)
Image ClassificationImageNet-LTTop-1 Accuracy41.8BALMS
Few-Shot Image ClassificationPlaces-LTTop-1 Accuracy38.7BALMS
Few-Shot Image ClassificationCIFAR-10-LT (ρ=10)Error Rate8.7Balanced Softmax (BALMS)
Few-Shot Image ClassificationImageNet-LTTop-1 Accuracy41.8BALMS
Generalized Few-Shot ClassificationPlaces-LTTop-1 Accuracy38.7BALMS
Generalized Few-Shot ClassificationCIFAR-10-LT (ρ=10)Error Rate8.7Balanced Softmax (BALMS)
Generalized Few-Shot ClassificationImageNet-LTTop-1 Accuracy41.8BALMS
Long-tail LearningPlaces-LTTop-1 Accuracy38.7BALMS
Long-tail LearningCIFAR-10-LT (ρ=10)Error Rate8.7Balanced Softmax (BALMS)
Long-tail LearningImageNet-LTTop-1 Accuracy41.8BALMS
Generalized Few-Shot LearningPlaces-LTTop-1 Accuracy38.7BALMS
Generalized Few-Shot LearningCIFAR-10-LT (ρ=10)Error Rate8.7Balanced Softmax (BALMS)
Generalized Few-Shot LearningImageNet-LTTop-1 Accuracy41.8BALMS

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