Skip to content

[SuperGlue: Learning Feature Matching with Graph Neural Networks] This repo includes PyTorch code for training the SuperGlue matching network on top of SIFT keypoints and descriptors.

License

Notifications You must be signed in to change notification settings

WiGig11/SuperGlue-pytorch

 
 

Repository files navigation

SuperGlue PyTorch Implementation

This SuperGlue implementation is intended for an application of Physarum Dynamics LP solver. Physarum Dynamics is a very fast and efficient LP solver that has the potential to be used to replace the original Sinkhorn Algorithm in SuperGlue.

Introduction

The SuperGlue network is a Graph Neural Network combined with an Optimal Matching layer that is trained to perform matching on two sets of sparse image features. SuperGlue operates as a "middle-end," performing context aggregation, matching, and filtering in a single end-to-end architecture.

Correspondences across images have some constraints:

  • A keypoint can have at most a single correspondence in the another image.
  • Some keypoints will be unmatched due to occlusion and failure of the detector.

SuperGlue aims to find all correspondences between reprojections of the same points and identifying keypoints that have no matches. There are two main components in SuperGlue architecture: Attentional Graph Neural Network and Optimal Matching Layer.

This repo includes PyTorch code for training the SuperGlue matching network on top of SIFT keypoints and descriptors. For more details, please see:

Dependencies

  • Python 3
  • PyTorch >= 1.1
  • OpenCV >= 3.4 (4.1.2.30 recommended for best GUI keyboard interaction, see this note)
  • Matplotlib >= 3.1
  • NumPy >= 1.18

Simply run the following command: pip3 install numpy opencv-python torch matplotlib

Or create a conda environment by conda install --name myenv --file superglue.txt

Contents

There are two main top-level scripts in this repo:

  1. train.py : trains the superglue model.
  2. load_data.py: reads images from files and creates pairs. It generates keypoints, descriptors and ground truth matches which will be used in training.

Download Data

Download the COCO2014 dataset files for training

wget http://images.cocodataset.org/zips/train2014.zip

Download the validation set

wget http://images.cocodataset.org/zips/val2014.zip

Download the test set

wget http://images.cocodataset.org/zips/test2014.zip

Training Directions

To train the SuperGlue with default parameters, run the following command:

python train.py

Additional useful command line parameters

  • Use --epoch to set the number of epochs (default: 20).
  • Use --train_path to set the path to the directory of training images.
  • Use --eval_output_dir to set the path to the directory in which the visualizations is written (default: dump_match_pairs/).
  • Use --show_keypoints to visualize the detected keypoints (default: False).
  • Use --viz_extension to set the visualization file extension (default: png). Use pdf for highest-quality.

Visualization Demo

The matches are colored by their predicted confidence in a jet colormap (Red: more confident, Blue: less confident).

You should see images like this inside of dump_match_pairs/

About

[SuperGlue: Learning Feature Matching with Graph Neural Networks] This repo includes PyTorch code for training the SuperGlue matching network on top of SIFT keypoints and descriptors.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%