The content discusses the challenges of long-tailed recognition and the importance of classifier re-training methods. It introduces new metrics, Logits Magnitude and Regularized Standard Deviation, to assess model performance. The proposed LORT method achieves significant improvements on various datasets by reducing Logits Magnitude effectively.
The study highlights the need for rigorous evaluation of classifier retraining methods based on unified feature representations. It emphasizes the impact of balancing Logits Magnitude between classes for better model performance. The LORT approach divides one-hot labels into true and negative probabilities, achieving state-of-the-art results on imbalanced datasets.
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