S4L: Self-Supervised Semi-Supervised Learning
About
This work tackles the problem of semi-supervised learning of image classifiers. Our main insight is that the field of semi-supervised learning can benefit from the quickly advancing field of self-supervised visual representation learning. Unifying these two approaches, we propose the framework of self-supervised semi-supervised learning and use it to derive two novel semi-supervised image classification methods. We demonstrate the effectiveness of these methods in comparison to both carefully tuned baselines, and existing semi-supervised learning methods. We then show that our approach and existing semi-supervised methods can be jointly trained, yielding a new state-of-the-art result on semi-supervised ILSVRC-2012 with 10% of labels.
Xiaohua Zhai, Avital Oliver, Alexander Kolesnikov, Lucas Beyer• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object Detection | COCO 2017 (val) | -- | 2454 | |
| Image Classification | ImageNet (val) | Top-1 Acc73.2 | 1206 | |
| Instance Segmentation | COCO 2017 (val) | -- | 1144 | |
| Image Classification | ImageNet-1k (val) | Top-1 Acc76.5 | 706 | |
| Object Detection | COCO (val) | mAP38.2 | 613 | |
| Action Recognition | NTU RGB+D 60 (Cross-View) | Accuracy76.9 | 575 | |
| Instance Segmentation | COCO (val) | APmk33.3 | 472 | |
| Image Classification | ImageNet ILSVRC-2012 (val) | Top-1 Accuracy76.5 | 405 | |
| Action Recognition | UCF101 (test) | Accuracy47.9 | 307 | |
| Action Recognition | NTU RGB-D Cross-Subject 60 | Accuracy68.2 | 305 |
Showing 10 of 72 rows
...