Code for "Learning to Regrasp by Learning to Place"

Overview

Learning2Regrasp

Learning to Regrasp by Learning to Place, CoRL 2021.

Introduction

We propose a point-cloud-based system for robots to predict a sequence of pick-and-place operations for transforming an initial object grasp pose to the desired object grasp poses. We introduce a new and challenging synthetic dataset for learning and evaluating the proposed approach. If you find this project useful for your research, please cite:

@inproceedings{
cheng2021learning,
title={Learning to Regrasp by Learning to Place},
author={Shuo Cheng and Kaichun Mo and Lin Shao},
booktitle={5th Annual Conference on Robot Learning },
year={2021},
url={https://openreview.net/forum?id=Qdb1ODTQTnL}
}

Real-world regrasping demo:

regrasp

How to Use

Environment

  • python 3.8 (Anaconda)
  • pip install -r requirements.txt

Dataset

Visualization of sample stable poses:

regrasp

Please download the dataset and place it inside this folder.

Reproducing Results

  • Evaluating synthetic data: python scripts/evaluate_testset.py
  • Evaluating real data: bash scripts/test_real_data.sh

Test Your Own Data:

  • Please organize your data in the real_data folder as the example provided
  • Please make your data as clean and complete as possible since an offset (x_mean, y_mean, z_min) will be subtracted for centralizing the point cloud

Training

  • Train generator: bash scripts/train_pose_generation.sh
  • Train classifier: bash scripts/train_multi_task.sh
Owner
Shuo Cheng (成硕)
Shuo Cheng (成硕)
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