HongYu Zhou, Zheng Ge, Songtao Liu, Weixin Mao, Zeming Li, Haiyan Yu, Jian Sun
To date, the most powerful semi-supervised object detectors (SS-OD) are based on pseudo-boxes, which need a sequence of post-processing with fine-tuned hyper-parameters. In this work, we propose replacing the sparse pseudo-boxes with the dense prediction as a united and straightforward form of pseudo-label. Compared to the pseudo-boxes, our Dense Pseudo-Label (DPL) does not involve any post-processing method, thus retaining richer information. We also introduce a region selection technique to highlight the key information while suppressing the noise carried by dense labels. We name our proposed SS-OD algorithm that leverages the DPL as Dense Teacher. On COCO and VOC, Dense Teacher shows superior performance under various settings compared with the pseudo-box-based methods.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Semi-Supervised Object Detection | COCO 100% labeled data | mAP | 46.2 | Dense Teacher |
| Semi-Supervised Object Detection | COCO 10% labeled data | mAP | 37.13 | Dense Teacher |
| Semi-Supervised Object Detection | COCO 5% labeled data | mAP | 33.01 | Dense Teacher |
| 2D Object Detection | COCO 100% labeled data | mAP | 46.2 | Dense Teacher |
| 2D Object Detection | COCO 10% labeled data | mAP | 37.13 | Dense Teacher |
| 2D Object Detection | COCO 5% labeled data | mAP | 33.01 | Dense Teacher |