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# SGMNet Implementation | |
![Framework](assets/teaser.png) | |
PyTorch implementation of SGMNet for ICCV'21 paper ["Learning to Match Features with Seeded Graph Matching Network"](https://arxiv.org/abs/2108.08771), by Hongkai Chen, Zixin Luo, Jiahui Zhang, Lei Zhou, Xuyang Bai, Zeyu Hu, Chiew-Lan Tai, Long Quan. | |
This work focuses on keypoint-based image matching problem. We mitigate the qudratic complexity issue for typical GNN-based matching by leveraging a restrited set of pre-matched seeds. | |
This repo contains training, evaluation and basic demo sripts used in our paper. As baseline, it also includes **our implementation** for [SuperGlue](https://arxiv.org/abs/1911.11763). If you find this project useful, please cite: | |
``` | |
@article{chen2021sgmnet, | |
title={Learning to Match Features with Seeded Graph Matching Network}, | |
author={Chen, Hongkai and Luo, Zixin and Zhang, Jiahui and Zhou, Lei and Bai, Xuyang and Hu, Zeyu and Tai, Chiew-Lan and Quan, Long}, | |
journal={International Conference on Computer Vision (ICCV)}, | |
year={2021} | |
} | |
``` | |
Part of the code is borrowed or ported from | |
[SuperPoint](https://github.com/magicleap/SuperPointPretrainedNetwork), for SuperPoint implementation, | |
[SuperGlue](https://github.com/magicleap/SuperGluePretrainedNetwork), for SuperGlue implementation and exact auc computation, | |
[OANet](https://github.com/zjhthu/OANet), for training scheme, | |
[PointCN](https://github.com/vcg-uvic/learned-correspondence-release), for implementaion of PointCN block and geometric transformations, | |
[FM-Bench](https://github.com/JiawangBian/FM-Bench), for evaluation of fundamental matrix estimation. | |
Please also cite these works if you find the corresponding code useful. | |
## Requirements | |
We use PyTorch 1.6, later version should also be compatible. Please refer to [requirements.txt](requirements.txt) for other dependencies. | |
If you are using conda, you may configure the environment as: | |
```bash | |
conda create --name sgmnet python=3.7 -y && \ | |
pip install -r requirements.txt && \ | |
conda activate sgmnet | |
``` | |
## Get started | |
Clone the repo: | |
```bash | |
git clone https://github.com/vdvchen/SGMNet.git && \ | |
``` | |
download model weights from [here](https://drive.google.com/file/d/1Ca0WmKSSt2G6P7m8YAOlSAHEFar_TAWb/view?usp=sharing) | |
extract weights by | |
```bash | |
tar -xvf weights.tar.gz | |
``` | |
A quick demo for image matching can be called by: | |
```bash | |
cd demo && python demo.py --config_path configs/sgm_config.yaml | |
``` | |
The resutls will be saved as **match.png** in demo folder. You may configure the matcher in corresponding yaml file. | |
## Evaluation | |
We demonstrate evaluation process with RootSIFT and SGMNet. Evaluation with other features/matchers can be conducted by configuring the corresponding yaml files. | |
### 1. YFCC Evaluation | |
Refer to [OANet](https://github.com/zjhthu/OANet) repo to download raw YFCC100M dataset | |
**Data Generation** | |
1. Configure **datadump/configs/yfcc_root.yaml** for the following entries | |
**rawdata_dir**: path for yfcc rawdata | |
**feature_dump_dir**: dump path for extracted features | |
**dataset_dump_dir**: dump path for generated dataset | |
**extractor**: configuration for keypoint extractor (2k RootSIFT by default) | |
2. Generate data by | |
```bash | |
cd datadump | |
python dump.py --config_path configs/yfcc_root.yaml | |
``` | |
An h5py data file will be generated under **dataset_dump_dir**, e.g. **yfcc_root_2000.hdf5** | |
**Evaluation**: | |
1. Configure **evaluation/configs/eval/yfcc_eval_sgm.yaml** for the following entries | |
**reader.rawdata_dir**: path for yfcc_rawdata | |
**reader.dataset_dir**: path for generated h5py dataset file | |
**matcher**: configuration for sgmnet (we use the default setting) | |
2. To run evaluation, | |
```bash | |
cd evaluation | |
python evaluate.py --config_path configs/eval/yfcc_eval_sgm.yaml | |
``` | |
For 2k RootSIFT matching, similar results as below should be obtained, | |
```bash | |
auc th: [5 10 15 20 25 30] | |
approx auc: [0.634 0.729 0.783 0.818 0.843 0.861] | |
exact auc: [0.355 0.552 0.655 0.719 0.762 0.793] | |
mean match score: 17.06 | |
mean precision: 86.08 | |
``` | |
### 2. ScanNet Evaluation | |
Download processed [ScanNet evaluation data](https://drive.google.com/file/d/14s-Ce8Vq7XedzKon8MZSB_Mz_iC6oFPy/view?usp=sharing). | |
**Data Generation** | |
1. Configure **datadump/configs/scannet_root.yaml** for the following entries | |
**rawdata_dir**: path for ScanNet raw data | |
**feature_dump_dir**: dump path for extracted features | |
**dataset_dump_dir**: dump path for generated dataset | |
**extractor**: configuration for keypoint extractor (2k RootSIFT by default) | |
2. Generate data by | |
```bash | |
cd datadump | |
python dump.py --config_path configs/scannet_root.yaml | |
``` | |
An h5py data file will be generated under **dataset_dump_dir**, e.g. **scannet_root_2000.hdf5** | |
**Evaluation**: | |
1. Configure **evaluation/configs/eval/scannet_eval_sgm.yaml** for the following entries | |
**reader.rawdata_dir**: path for ScanNet evaluation data | |
**reader.dataset_dir**: path for generated h5py dataset file | |
**matcher**: configuration for sgmnet (we use the default setting) | |
2. To run evaluation, | |
```bash | |
cd evaluation | |
python evaluate.py --config_path configs/eval/scannet_eval_sgm.yaml | |
``` | |
For 2k RootSIFT matching, similar results as below should be obtained, | |
```bash | |
auc th: [5 10 15 20 25 30] | |
approx auc: [0.322 0.427 0.493 0.541 0.577 0.606] | |
exact auc: [0.125 0.283 0.383 0.452 0.503 0.541] | |
mean match score: 8.79 | |
mean precision: 45.54 | |
``` | |
### 3. FM-Bench Evaluation | |
Refer to [FM-Bench](https://github.com/JiawangBian/FM-Bench) repo to download raw FM-Bench dataset | |
**Data Generation** | |
1. Configure **datadump/configs/fmbench_root.yaml** for the following entries | |
**rawdata_dir**: path for fmbench raw data | |
**feature_dump_dir**: dump path for extracted features | |
**dataset_dump_dir**: dump path for generated dataset | |
**extractor**: configuration for keypoint extractor (4k RootSIFT by default) | |
2. Generate data by | |
```bash | |
cd datadump | |
python dump.py --config_path configs/fmbench_root.yaml | |
``` | |
An h5py data file will be generated under **dataset_dump_dir**, e.g. **fmbench_root_4000.hdf5** | |
**Evaluation**: | |
1. Configure **evaluation/configs/eval/fm_eval_sgm.yaml** for the following entries | |
**reader.rawdata_dir**: path for fmbench raw data | |
**reader.dataset_dir**: path for generated h5py dataset file | |
**matcher**: configuration for sgmnet (we use the default setting) | |
2. To run evaluation, | |
```bash | |
cd evaluation | |
python evaluate.py --config_path configs/eval/fm_eval_sgm.yaml | |
``` | |
For 4k RootSIFT matching, similar results as below should be obtained, | |
```bash | |
CPC results: | |
F_recall: 0.617 | |
precision: 0.7489 | |
precision_post: 0.8399 | |
num_corr: 663.838 | |
num_corr_post: 284.455 | |
KITTI results: | |
F_recall: 0.911 | |
precision: 0.9035133886251774 | |
precision_post: 0.9837278538989989 | |
num_corr: 1670.548 | |
num_corr_post: 1121.902 | |
TUM results: | |
F_recall: 0.666 | |
precision: 0.6520260208250837 | |
precision_post: 0.731507123852191 | |
num_corr: 1650.579 | |
num_corr_post: 941.846 | |
Tanks_and_Temples results: | |
F_recall: 0.855 | |
precision: 0.7452896681043316 | |
precision_post: 0.8020184635328004 | |
num_corr: 946.571 | |
num_corr_post: 466.865 | |
``` | |
### 4. Run time and memory Evaluation | |
We provide a script to test run time and memory consumption, for a quick start, run | |
```bash | |
cd evaluation | |
python eval_cost.py --matcher_name SGM --config_path configs/cost/sgm_cost.yaml --num_kpt=4000 | |
``` | |
You may configure the matcher in corresponding yaml files. | |
## Visualization | |
For visualization of matching results on different dataset, add **--vis_folder** argument on evaluation command, e.g. | |
```bash | |
cd evaluation | |
python evaluate.py --config_path configs/eval/***.yaml --vis_folder visualization | |
``` | |
## Training | |
We train both SGMNet and SuperGlue on [GL3D](https://github.com/lzx551402/GL3D) dataset. The training data is pre-generated in an offline manner, which yields about 400k pairs in total. | |
To generate training/validation dataset | |
1. Download [GL3D](https://github.com/lzx551402/GL3D) rawdata | |
2. Configure **datadump/configs/gl3d.yaml**. Some important entries are | |
**rawdata_dir**: path for GL3D raw data | |
**feature_dump_dir**: path for extracted features | |
**dataset_dump_dir**: path for generated dataset | |
**pairs_per_seq**: number of pairs sampled for each sequence | |
**angle_th**: angle threshold for sampled pairs | |
**overlap_th**: common track threshold for sampled pairs | |
**extractor**: configuration for keypoint extractor | |
3. dump dataset by | |
```bash | |
cd datadump | |
python dump.py --config_path configs/gl3d.yaml | |
``` | |
Two parts of data will be generated. (1) Extracted features and keypoints will be placed under **feature_dump_dir** (2) Pairwise dataset will be placed under **dataset_dump_dir**. | |
4. After data generation, configure **train/train_sgm.sh** for necessary entries, including | |
**rawdata_path**: path for GL3D raw data | |
**desc_path**: path for extracted features | |
**dataset_path**: path for generated dataset | |
**desc_suffix**: suffix for keypoint files, _root_1000.hdf5 for 1k RootSIFT by default. | |
**log_base**: log directory for training | |
5. run SGMNet training scripts by | |
```bash | |
bash train_sgm.sh | |
``` | |
our training scripts support multi-gpu training, which can be enabled by configure **train/train_sgm.sh** for these entries | |
**CUDA_VISIBLE_DEVICES**: id of gpus to be used | |
**nproc_per_node**: number of gpus to be used | |
run SuperGlue training scripts by | |
```bash | |
bash train_sg.sh | |
``` | |