Dahyun Kang, Minsu Cho
We present lazy visual grounding, a two-stage approach of unsupervised object mask discovery followed by object grounding, for open-vocabulary semantic segmentation. Plenty of the previous art casts this task as pixel-to-text classification without object-level comprehension, leveraging the image-to-text classification capability of pretrained vision-and-language models. We argue that visual objects are distinguishable without the prior text information as segmentation is essentially a vision task. Lazy visual grounding first discovers object masks covering an image with iterative Normalized cuts and then later assigns text on the discovered objects in a late interaction manner. Our model requires no additional training yet shows great performance on five public datasets: Pascal VOC, Pascal Context, COCO-object, COCO-stuff, and ADE 20K. Especially, the visually appealing segmentation results demonstrate the model capability to localize objects precisely. Paper homepage: https://cvlab.postech.ac.kr/research/lazygrounding
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Open Vocabulary Semantic Segmentation | COCO-Stuff-171 | mIoU | 23.2 | LaVG |
| Open Vocabulary Semantic Segmentation | PascalVOC-20 | mIoU | 82.5 | LaVG |
| Open Vocabulary Semantic Segmentation | PASCAL Context-59 | mIoU | 34.7 | LaVG |
| Open Vocabulary Semantic Segmentation | ADE20K-150 | mIoU | 15.8 | LaVG |