English

On Model Calibration for Long-Tailed Object Detection and Instance Segmentation

Computer Vision and Pattern Recognition 2021-12-01 v2 Artificial Intelligence Machine Learning

Abstract

Vanilla models for object detection and instance segmentation suffer from the heavy bias toward detecting frequent objects in the long-tailed setting. Existing methods address this issue mostly during training, e.g., by re-sampling or re-weighting. In this paper, we investigate a largely overlooked approach -- post-processing calibration of confidence scores. We propose NorCal, Normalized Calibration for long-tailed object detection and instance segmentation, a simple and straightforward recipe that reweighs the predicted scores of each class by its training sample size. We show that separately handling the background class and normalizing the scores over classes for each proposal are keys to achieving superior performance. On the LVIS dataset, NorCal can effectively improve nearly all the baseline models not only on rare classes but also on common and frequent classes. Finally, we conduct extensive analysis and ablation studies to offer insights into various modeling choices and mechanisms of our approach. Our code is publicly available at https://github.com/tydpan/NorCal/.

Keywords

Cite

@article{arxiv.2107.02170,
  title  = {On Model Calibration for Long-Tailed Object Detection and Instance Segmentation},
  author = {Tai-Yu Pan and Cheng Zhang and Yandong Li and Hexiang Hu and Dong Xuan and Soravit Changpinyo and Boqing Gong and Wei-Lun Chao},
  journal= {arXiv preprint arXiv:2107.02170},
  year   = {2021}
}

Comments

Accepted to NeurIPS 2021

R2 v1 2026-06-24T03:54:27.190Z