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MultiON: Benchmarking Semantic Map Memory using Multi-Object Navigation
This is a PyTorch implementation of our NeurIPS 2020 paper, MultiON: Benchmarking Semantic Map Memory using Multi-Object Navigation.
Project Webpage: https://shivanshpatel35.github.io/multi-ON/
Architecture Overview
Installing dependencies:
This code is tested on python 3.6.10, pytorch v1.4.0 and CUDA V9.1.85.
Install pytorch from https://pytorch.org/ according to your machine configuration.
This code uses older versions of habitat-sim and habitat-lab. Install them by running the following commands:
Installing habitat-sim:
git clone https://github.com/facebookresearch/habitat-sim.git
cd habitat-sim
git checkout ae6ba1cdc772f7a5dedd31cbf9a5b77f6de3ff0f
pip install -r requirements.txt;
python setup.py install --headless # (for headless machines with GPU)
python setup.py install # (for machines with display attached)
Installing habitat-lab:
git clone --branch stable https://github.com/facebookresearch/habitat-lab.git
cd habitat-lab
git checkout 676e593b953e2f0530f307bc17b6de66cff2e867
pip install -e .
We know that roadblocks can come up while installing Habitat, we are here to help! For installation issues in habitat, feel free to raise an issue in this repository, or in the corresponding habitat repository.
Setup
Clone the repository and install the requirements:
git clone https://github.com/saimwani/multiON
cd multiON
pip install -r requirements.txt
Downloading data and checkpoints
To evaluate pre-trained models and train new models, you will need to download the MultiON dataset, including objects inserted into the scenes, and model checkpoints. Running download_multion_data.sh
from the root directory (multiON/
) will download the data and extract it to appropriate directories. Note that you are still required to download Matterport3D scenes after you run the script (see section on Download Matterport3D scenes below). Running the script will download the OracleEgoMap (oracle-ego
) pre-trained model by default. If you'd like to evaluate other pre-trained models, see this.
bash download_multion_data.sh
Download multiON dataset
You do not need to complete this step if you have successfully run the download_multion_data.sh
script above.
Run the following to download multiON dataset and cached oracle occupancy maps:
mkdir data
cd data
mkdir datasets
cd datasets
wget -O multinav.zip "http://aspis.cmpt.sfu.ca/projects/multion/multinav.zip"
unzip multinav.zip && rm multinav.zip
cd ../
wget -O objects.zip "http://aspis.cmpt.sfu.ca/projects/multion/objects.zip"
unzip objects.zip && rm objects.zip
wget -O default.phys_scene_config.json "http://aspis.cmpt.sfu.ca/projects/multion/default.phys_scene_config.json"
cd ../
mkdir oracle_maps
cd oracle_maps
wget -O map300.pickle "http://aspis.cmpt.sfu.ca/projects/multion/map300.pickle"
cd ../
Download Matterport3D scenes
The Matterport scene dataset and multiON dataset should be placed in data
folder under the root directory (multiON/
) in the following format:
multiON/
data/
scene_datasets/
mp3d/
1LXtFkjw3qL/
1LXtFkjw3qL.glb
1LXtFkjw3qL.navmesh
...
datasets/
multinav/
3_ON/
train/
...
val/
val.json.gz
2_ON
...
1_ON
...
Download Matterport3D data for Habitat by following the instructions mentioned here.
Usage
Pre-trained models
You do not need to complete this step if you have successfully run the download_multion_data.sh
script above.
mkdir model_checkpoints
Download a pre-trained agent model as shown below.
Agent | Run |
---|---|
NoMap(RNN) | wget -O model_checkpoints/ckpt.0.pth "http://aspis.cmpt.sfu.ca/projects/multion/model_checkpoints/ckpt.0.pth" |
ProjNeural | wget -O model_checkpoints/ckpt.1.pth "http://aspis.cmpt.sfu.ca/projects/multion/model_checkpoints/ckpt.1.pth" |
ObjRecog | wget -O model_checkpoints/ckpt.2.pth "http://aspis.cmpt.sfu.ca/projects/multion/model_checkpoints/ckpt.2.pth" |
OracleEgoMap | wget -O model_checkpoints/ckpt.3.pth "http://aspis.cmpt.sfu.ca/projects/multion/model_checkpoints/ckpt.3.pth" |
OracleMap | wget -O model_checkpoints/ckpt.4.pth "http://aspis.cmpt.sfu.ca/projects/multion/model_checkpoints/ckpt.4.pth" |
Evaluation
Evaluation will run on the 3_ON
test set by default. To change this, specify the dataset path here.
To evaluate a pretrained OracleEgoMap (oracle-ego
) agent, run this from the root folder (multiON/
):
python habitat_baselines/run.py --exp-config habitat_baselines/config/multinav/ppo_multinav.yaml --agent-type oracle-ego --run-type eval
For other agent types, the --agent-type
argument should be changed according to this table:
Agent | Agent type |
---|---|
NoMap(RNN) | no-map |
OracleMap | oracle |
OracleEgoMap | oracle-ego |
ProjNeuralmap | proj-neural |
ObjRecogMap | obj-recog |
Average evaluation metrics are printed on the console when evaluation ends. Detailed metrics are placed in eval/metrics
directory.
Training
For training an OracleEgoMap (oracle-ego
) agent, run this from the root directory:
python habitat_baselines/run.py --exp-config habitat_baselines/config/multinav/ppo_multinav.yaml --agent-type oracle-ego --run-type train
For other agent types, the --agent-type
argument would change accordingly.
Citation
Saim Wani*, Shivansh Patel*, Unnat Jain*, Angel X. Chang, Manolis Savva, 2020. MultiON: Benchmarking Semantic Map Memory using Multi-Object Navigation in Neural Information Processing Systems (NeurIPS). PDF
Bibtex
@inproceedings{wani2020multion,
title={Multi-ON: Benchmarking Semantic Map Memory using Multi-Object Navigation},
author={Saim Wani and Shivansh Patel and Unnat Jain and Angel X. Chang and Manolis Savva},
booktitle={Neural Information Processing Systems (NeurIPS)},
year={2020},
}
Acknowledgements
This repository is built upon Habitat Lab.