GIM: Learning Generalizable Image Matcher From Internet Videos
| | Method
| Mean AUC@5Β° (%) β
| GL3 | BLE | ETI | ETO | KIT | WEA | SEA | NIG | MUL | SCE | ICL | GTA |
| ---- | ------------------------------------------------------------ | --------------------------------------------------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- | -------- |
| | | Handcrafted | | | | | | | | | | | | |
| | RootSIFT | 31.8 | 43.5 | 33.6 | 49.9 | 48.7 | 35.2 | 21.4 | 44.1 | 14.7 | 33.4 | 7.6 | 14.8 | 35.1 |
| | | Sparse Matching | | | | | | | | | | | | |
| | [SuperGlue](https://github.com/magicleap/SuperGluePretrainedNetwork) (in) | 21.6 | 19.2 | 16.0 | 38.2 | 37.7 | 22.0 | 20.8 | 40.8 | 13.7 | 21.4 | 0.8 | 9.6 | 18.8 |
| | SuperGlue (out) | 31.2 | 29.7 | 24.2 | 52.3 | 59.3 | 28.0 | 28.4 | 48.0 | 20.9 | 33.4 | 4.5 | 16.6 | 29.3 |
| | **GIM_SuperGlue** (50h) | 34.3 | 43.2 | 34.2 | 58.7 | 61.0 | 29.0 | 28.3 | 48.4 | 18.8 | 34.8 | 2.8 | 15.4 | 36.5 |
| | [LightGlue](https://github.com/cvg/LightGlue) | 31.7 | 28.9 | 23.9 | 51.6 | 56.3 | 32.1 | 29.5 | 48.9 | 22.2 | 37.4 | 3.0 | 16.2 | 30.4 |
| β
| **GIM_LightGlue** (100h) | **38.3** | **46.6** | **38.1** | **61.7** | **62.9** | **34.9** | **31.2** | **50.6** | **22.6** | **41.8** | **6.9** | **19.0** | **43.4** |
| | | Semi-dense Matching | | | | | | | | | | | | |
| | [LoFTR](https://github.com/zju3dv/LoFTR) (in) | 10.7 | 5.6 | 5.1 | 11.8 | 7.5 | 17.2 | 6.4 | 9.7 | 3.5 | 22.4 | 1.3 | 14.9 | 23.4 |
| | LoFTR (out) | 33.1 | 29.3 | 22.5 | 51.1 | 60.1 | **36.1** | **29.7** | **48.6** | **19.4** | 37.0 | **13.1** | 20.5 | 30.3 |
| | **GIM_LoFTR** (50h) | **39.1** | **50.6** | **43.9** | **62.6** | **61.6** | 35.9 | 26.8 | 47.5 | 17.6 | **41.4** | 10.2 | **25.6** | **45.0** |
| π© | **GIM_LoFTR** (100h) | ToDO | | | | | | | | | | | | |
| | | Dense Matching | | | | | | | | | | | | |
| | [DKM](https://github.com/Parskatt/DKM) (in) | 46.2 | 44.4 | 37.0 | 65.7 | 73.3 | 40.2 | 32.8 | 51.0 | 23.1 | 54.7 | 33.0 | **43.6** | 55.7 |
| | DKM (out) | 45.8 | 45.7 | 37.0 | 66.8 | 75.8 | 41.7 | 33.5 | 51.4 | 22.9 | 56.3 | 27.3 | 37.8 | 52.9 |
| | **GIM_DKM** (50h) | 49.4 | 58.3 | 47.8 | 72.7 | 74.5 | 42.1 | **34.6** | 52.0 | **25.1** | 53.7 | 32.3 | 38.8 | 60.6 |
| β
| **GIM_DKM** (100h) | **51.2** | **63.3** | **53.0** | **73.9** | 76.7 | **43.4** | **34.6** | **52.5** | 24.5 | 56.6 | 32.2 | 42.5 | **61.6** |
| | [RoMa](https://github.com/Parskatt/RoMa) (in) | 46.7 | 46.0 | 39.3 | 68.8 | 77.2 | 36.5 | 31.1 | 50.4 | 20.8 | 57.8 | **33.8** | 41.7 | 57.6 |
| | RoMa (out) | 48.8 | 48.3 | 40.6 | 73.6 | **79.8** | 39.9 | 34.4 | 51.4 | 24.2 | **59.9** | 33.7 | 41.3 | 59.2 |
| π© | **GIM_RoMa** | ToDO | | | | | | | | | | | | |
> The data in this table comes from the **ZEB**: Zero-shot Evaluation Benchmark for Image Matching proposed in the paper. This benchmark consists of 12 public datasets that cover a variety of scenes, weather conditions, and camera models, corresponding to the 12 test sequences starting from GL3 in the table. We will release **ZEB** as soon as possible.
## β
TODO List
- [ ] Inference code
- [ ] gim_roma
- [x] gim_dkm
- [ ] gim_loftr
- [x] gim_lightglue
- [ ] Training code
> We are actively continuing with the remaining open-source work and appreciate everyone's attention.
## π€ Online demo
Go to [Huggingface](https://huggingface.co/spaces/xuelunshen/gim-online) to quickly try our model online.
## βοΈ Environment
I set up the running environment on a new machine using the commands listed below.
```bash
conda install pytorch==1.10.1 torchvision==0.11.2 torchaudio==0.10.1 cudatoolkit=11.3 -c pytorch -c conda-forge
pip install albumentations==1.0.1 --no-binary=imgaug,albumentations
pip install pytorch-lightning==1.5.10
pip install opencv-python==4.5.3.56
pip install imagesize==1.2.0
pip install kornia==0.6.10
pip install einops==0.3.0
pip install loguru==0.5.3
pip install joblib==1.0.1
pip install yacs==0.1.8
pip install h5py==3.1.0
```
## π¨ Usage
Clone the repository
```bash
git clone https://github.com/xuelunshen/gim.git
cd gim
```
Download `gim_dkm` model weight from [Google Drive](https://drive.google.com/file/d/1gk97V4IROnR1Nprq10W9NCFUv2mxXR_-/view?usp=sharing)
Put it on the folder `weights`
Run the following command
```bash
python demo.py --model gim_dkm
```
or
```bash
python demo.py --model gim_lightglue
```
The code will match `a1.png` and `a2.png` in the folder `assets/demo`, and output `a1_a2_match.png` and `a1_a2_warp.png`.
Click to show
a1.png
and
a2.png
.
Click to show
a1_a2_match.png
.
a1_a2_match.png
is a visualization of the match between the two images
Click to show
a1_a2_warp.png
.
a1_a2_warp.png
shows the effect of projecting image a2
onto image a1
using homography
There are more images in the `assets/demo` folder, you can try them out.
Click to show other images.
## π Citation
If the paper and code from `gim` help your research, we kindly ask you to give a citation to our paper β€οΈ. Additionally, if you appreciate our work and find this repository useful, giving it a star βοΈ would be a wonderful way to support our work. Thank you very much.
```bibtex
@inproceedings{
xuelun2024gim,
title={GIM: Learning Generalizable Image Matcher From Internet Videos},
author={Xuelun Shen and Zhipeng Cai and Wei Yin and Matthias MΓΌller and Zijun Li and Kaixuan Wang and Xiaozhi Chen and Cheng Wang},
booktitle={The Twelfth International Conference on Learning Representations},
year={2024}
}
```
## π Star History
## License
This repository is under the MIT License. This content/model is provided here for research purposes only. Any use beyond this is your sole responsibility and subject to your securing the necessary rights for your purpose.