GeoMatch Trained Model

This repository contains the final trained GeoMatch model checkpoint developed during my internship at the Human Interactive Robotics (HIRo) Laboratory, IISc Bangalore.

Overview

GeoMatch is a Graph Neural Network (GNN)-based framework for robotic grasp generation. Given an object and a robotic hand, the model predicts feasible grasp poses that can subsequently be evaluated using a physics simulator.

This repository contains the final trained model checkpoint used for inference.


Model File

grasp_gnn.pth

Usage

  1. Clone the GeoMatch repository:

https://github.com/google-deepmind/geomatch

  1. Download grasp_gnn.pth from this repository.

  2. Replace the default checkpoint (or place it in the appropriate checkpoint directory).

  3. Run the GeoMatch inference pipeline to generate grasp predictions.


Related Repository

The code, documentation, bridge implementation, and project handover are available in my GitHub fork:

https://github.com/Saanvi-Mehra/Geomatch


Internship Contributions

The work completed during this internship includes:

  • Training the GeoMatch model
  • Generating grasp predictions for unseen objects
  • Developing a bridge between GeoMatch and GenDexGrasp
  • Integrating GeoMatch with the GenDexGrasp evaluation framework in Isaac Gym
  • Developing utilities for grasp visualization
  • Documenting the complete workflow for future contributors

Note: GenDexGrasp was used only as a physics-based evaluation framework. No modifications were made to its core learning pipeline.


Acknowledgements

This work is based on the original GeoMatch framework developed by Google DeepMind.

Original repository:

https://github.com/google-deepmind/geomatch

Please cite the original GeoMatch work if you use this model.


License

This model is released under the Apache-2.0 License, consistent with the original GeoMatch repository.

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