S4OD: Semi-Supervised learning for Single-Stage Object Detection (2204.04492v1)
Abstract: Single-stage detectors suffer from extreme foreground-background class imbalance, while two-stage detectors do not. Therefore, in semi-supervised object detection, two-stage detectors can deliver remarkable performance by only selecting high-quality pseudo labels based on classification scores. However, directly applying this strategy to single-stage detectors would aggravate the class imbalance with fewer positive samples. Thus, single-stage detectors have to consider both quality and quantity of pseudo labels simultaneously. In this paper, we design a dynamic self-adaptive threshold (DSAT) strategy in classification branch, which can automatically select pseudo labels to achieve an optimal trade-off between quality and quantity. Besides, to assess the regression quality of pseudo labels in single-stage detectors, we propose a module to compute the regression uncertainty of boxes based on Non-Maximum Suppression. By leveraging only 10% labeled data from COCO, our method achieves 35.0% AP on anchor-free detector (FCOS) and 32.9% on anchor-based detector (RetinaNet).
- Yueming Zhang (8 papers)
- Xingxu Yao (6 papers)
- Chao Liu (358 papers)
- Feng Chen (261 papers)
- Xiaolin Song (12 papers)
- Tengfei Xing (9 papers)
- Runbo Hu (8 papers)
- Hua Chai (13 papers)
- Pengfei Xu (57 papers)
- Guoshan Zhang (4 papers)