Mask2Former for Video Instance Segmentation
About
We find Mask2Former also achieves state-of-the-art performance on video instance segmentation without modifying the architecture, the loss or even the training pipeline. In this report, we show universal image segmentation architectures trivially generalize to video segmentation by directly predicting 3D segmentation volumes. Specifically, Mask2Former sets a new state-of-the-art of 60.4 AP on YouTubeVIS-2019 and 52.6 AP on YouTubeVIS-2021. We believe Mask2Former is also capable of handling video semantic and panoptic segmentation, given its versatility in image segmentation. We hope this will make state-of-the-art video segmentation research more accessible and bring more attention to designing universal image and video segmentation architectures.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Instance Segmentation | COCO 2017 (val) | -- | 1144 | |
| Video Instance Segmentation | YouTube-VIS 2019 (val) | AP60.7 | 567 | |
| Video Instance Segmentation | YouTube-VIS 2021 (val) | AP57.2 | 344 | |
| Video Instance Segmentation | OVIS (val) | AP26.4 | 301 | |
| Video Instance Segmentation | YouTube-VIS 2019 | AP61.6 | 75 | |
| Video Instance Segmentation | YouTube-VIS 2021 | AP55.3 | 63 | |
| Video Instance Segmentation | YTVIS 2019 (test val) | AP60.4 | 28 | |
| Video Instance Segmentation | OVIS | mAP24.1 | 23 | |
| Video Instance Segmentation | YouTube-VIS 2019 (test) | AP60.4 | 13 | |
| Video Instance Segmentation | OVIS (test) | AP25.8 | 12 |