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LTRL: Boosting Long-tail Recognition via Reflective Learning

Authors :
Zhao, Qihao
Dai, Yalun
Lin, Shen
Hu, Wei
Zhang, Fan
Liu, Jun
Publication Year :
2024

Abstract

In real-world scenarios, where knowledge distributions exhibit long-tail. Humans manage to master knowledge uniformly across imbalanced distributions, a feat attributed to their diligent practices of reviewing, summarizing, and correcting errors. Motivated by this learning process, we propose a novel learning paradigm, called reflecting learning, in handling long-tail recognition. Our method integrates three processes for reviewing past predictions during training, summarizing and leveraging the feature relation across classes, and correcting gradient conflict for loss functions. These designs are lightweight enough to plug and play with existing long-tail learning methods, achieving state-of-the-art performance in popular long-tail visual benchmarks. The experimental results highlight the great potential of reflecting learning in dealing with long-tail recognition.<br />Comment: ECCV2024, Oral

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.12568
Document Type :
Working Paper