Awesome
R3M: A Universal Visual Representation for Robot Manipulation
This project studies how to learn generalizable visual representation for robotics from videos of humans and natural language. It contains pre-trained representation on the Ego4D dataset trained in the R3M paper
Installation
To install R3M from an existing conda environment, simply run pip install -e .
from this directory.
You can alternatively build a fresh conda env from the r3m_base.yaml file here and then install from this directory with pip install -e .
You can test if it has installed correctly by running import r3m
from a python shell.
Using the representation
To use the model in your code simply run:
from r3m import load_r3m
r3m = load_r3m("resnet50") # resnet18, resnet34
r3m.eval()
Further example code to use a pre-trained representation is located in the example here.
If you have any issue accessing or downloading R3M please contact Suraj Nair: surajn (at) stanford (dot) edu
Training the representation
To train the representation run:
python train_representation.py hydra/launcher=local hydra/output=local agent.langweight=1.0 agent.size=50 experiment=r3m_test dataset=ego4d doaug=rctraj agent.l1weight=0.00001 batch_size=16 datapath=<PATH TO PARSED Ego4D DATA> wandbuser=<WEIGHTS AND BIASES USER> wandbproject=<WEIGHTS AND BIASES PROJECT>
Note: For fast training, the Ego4D data loading code assumes that the dataset has been parsed into frames, with a folder for each video clip and frames of the videoclip (resized to [224 x 224]) numbered within the directory (for example 000123.jpg
). It also assumes a file called manifest.csv
which has a row for each clip, with the path to the clip folder, the clip length, and the natural language pairing for the clip.
Evaluating the representation with behavior cloning
Code coming soon!
License
R3M is licensed under the MIT license.
Ackowledgements
Parts of this code are adapted from the DrQV2 codebase