MarkMoHR / Awesome Referring Image Segmentation
π A collection of papers about Referring Image Segmentation.
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Awesome-Referring-Image-Segmentation
A collection of referring image segmentation papers and datasets.
Feel free to create a PR or an issue.
Outline
- 1. Datasets
- 2. Traditional Referring Image Segmentation
- 3. Interactive Referring Image Segmentation
- 4. Referring Video Segmentation
- 5. Referring 3D Instance Segmentation
1. Datasets
Short name | Paper | Source | Code/Project Link |
---|---|---|---|
ReferIt | Referit game: Referring to objects in photographs of natural scenes | EMNLP 2014 | [project] |
Google-Ref | Generation and comprehension of unambiguous object descriptions | CVPR 2016 | [dataset] |
UNC | Modeling context in referring expressions | ECCV 2016 | [dataset] |
UNC+ | Modeling context in referring expressions | ECCV 2016 | [dataset] |
CLEVR-Ref+ | CLEVR-Ref+: Diagnosing Visual Reasoning with Referring Expressions | CVPR 2019 | [project] |
VGPhraseCut | PhraseCut: Language-based Image Segmentation in the Wild | CVPR 2020 | [project] |
2. Traditional Referring Image Segmentation
3. Interactive Referring Image Segmentation
Short name | Paper | Source | Code/Project Link |
---|---|---|---|
PhraseClick | PhraseClick: Toward Achieving Flexible Interactive Segmentation by Phrase and Click | ECCV 2020 |
4. Referring Video Segmentation
Short name | Paper | Source | Code/Project Link |
---|---|---|---|
RefVOS | RefVOS: A Closer Look at Referring Expressions for Video Object Segmentation | arxiv | |
URVOS | URVOS: Unified Referring Video Object Segmentation Network with a Large-Scale Benchmark | ECCV 2020 | [code] |
Video Object Segmentation with Language Referring Expressions | ACCV 2018 |
5. Referring 3D Instance Segmentation
Short name | Paper | Source | Code/Project Link |
---|---|---|---|
TGNN | Text-Guided Graph Neural Networks for Referring 3D Instance Segmentation | AAAI 2021 |
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