Zero-Shot Visual Imitation
[Project Website] [Videos]
In ICLR 2018Deepak Pathak*, Parsa Mahmoudieh*, Guanghao Luo*, Pulkit Agrawal*, Dian Chen,
Yide Shentu, Evan Shelhamer, Jitendra Malik, Alexei A. Efros, Trevor Darrell
University of California, Berkeley
This is the implementation for the ICLR 2018 paper Zero Shot Visual Imitation. We propose an alternative paradigm wherein an agent first explores the world without any expert supervision and then distills its experience into a goal-conditioned skill policy with a novel forward consistency loss. The key insight is the intuition that, for most tasks, reaching the goal is more important than how it is reached.
@inproceedings{pathakICLR18zeroshot,
Author = {Pathak, Deepak and
Mahmoudieh, Parsa and Luo, Guanghao and
Agrawal, Pulkit and Chen, Dian and
Shentu, Yide and Shelhamer, Evan and
Malik, Jitendra and Efros, Alexei A. and
Darrell, Trevor},
Title = {Zero-Shot Visual Imitation},
Booktitle = {ICLR},
Year = {2018}
}
1) Installation and Usage
Requirements
git clone -b master --single-branch https://github.com/pathak22/zeroshot-imitation.git
cd zeroshot-imitation/
# (1) Install requirements:
sudo apt-get install python-tk
virtualenv venv
source $PWD/venv/bin/activate
pip install --upgrade pip
pip install numpy
pip install -r src/requirements.txt
# (2) Install Caffe: http://caffe.berkeleyvision.org/install_apt.html
git clone https://github.com/BVLC/caffe.git
sudo apt-get install libprotobuf-dev libleveldb-dev libsnappy-dev libopencv-dev libhdf5-serial-dev protobuf-compiler
sudo apt-get install libatlas-base-dev
sudo apt-get install libgflags-dev libgoogle-glog-dev liblmdb-dev
sudo apt-get install --no-install-recommends libboost-all-dev
cd caffe/ # edit Makefile.config
make all -j
make pycaffe
make test -j
make runtest -j
# Note: If you are using conda, then its easy:
# $ conda install -c conda-forge caffe
# $ conda install -c conda-forge opencv=3.2.0
Data setup
Data can be downloaded at google drive link. This is the same data as used in Combining Self-Supervised Learning and Imitation for Vision-Based Rope Manipulation.
You will need the rope dataset from this download.
Then, download the AlexNet weights, bvlc_alexnet.npy from here
- put rope data in data/datasets/rope9
- it is important to name it rope9!
- put bvlc_alexnet.npy in nets/bvlc_alexnet.npy
Training
python -i train.py
# fwd_consist=True to turn foward consistency loss on,
# or leave it False for to just learn the inverse model
r = RopeImitator('name', fwd_consist=True)
# to train baseline, turn baseline_reg=True. note that fwd_consist should be turned on as well (historical accident)
r = RopeImitator('name', fwd_consist=True, baseline_reg=True)
# Restore old models, if any. default of model_name is just current model name
r.restore(iteration, model_name='name of old model')
# training
r.train(num_iters)
Note that the accuracies presented is not a good measure of real world performance. The purpose of forward consistency is to learn actions consistent with state transistions, which don't necessarily have to be the ground truth actions.