SGoLAM - Simultaneous Goal Localization and Mapping

Related tags

Deep LearningSGoLAM
Overview

SGoLAM - Simultaneous Goal Localization and Mapping

PyTorch implementation of the MultiON runner-up entry, SGoLAM: Simultaneous Goal Localization and Mapping [Talk Video]. Our method does not employ any training of neural networks, but shows competent performance in the MultiON benchmark. In fact, we outperform the winning entry by a large margin in terms of success rate.

alt text

We encourage future participants of the MultiON challenge to use our code as a starting point for implementing more sophisticated navigation agents. If you have any questions on running SGoLAM please leave an issue.

Notes on Installation

To run experiments locally/on a server, follow the 'bag of tricks' below:

  1. Please abide by the steps provided in the original MultiON repository. (Don't bother looking at other repositories!)
  2. Along the installation process, numerous dependency errors will occur. Don't look for other workarounds and just humbly install what is missing.
  3. For installing Pytorch and other CUDA dependencies, it seems like the following command works: conda install pytorch==1.7.1 torchvision==0.8.2 torchaudio==0.7.2 cudatoolkit=10.1 -c pytorch.
  4. By the way, habitat-lab installation is much easier than habitat-sim. You don't necessarily need to follow the instructions provided in the MultiON repository for habitat-lab. Just go directly to the habitat-lab repository and install habitat-lab. However, for habitat-sim, you must follow MultiON's directions; or a pile of bugs will occur.
  5. One python evaluate.py is run, a horrifying pile of dependency errors will occur. Now we will go over some of the prominent ones.
  6. To solve AttributeError: module 'attr' has no attribute 's', run pip uninstall attr and then run pip install attrs.
  7. To solve ModuleNotFoundError: No module named 'imageio', run pip install imageio-ffmpeg.
  8. To solve ImportError: ModuleNotFoundError: No module named 'magnum', run pip install build/deps/magnum-bindings/src/python.
  9. The last and most important 'trick' is to google errors. The Habitat team seems to be doing a great job answering GitHub issues. Probably someone has already ran into the error you are facing.
  10. If additional 'tricks' are found, feel free to share by appending to the list starting from here. `

Docker Sanity Check (Last Modified: 2021.03.26:20:11)

A number of commands to take for docker sanity check.

Login

First, login to the dockerhub repository. As our accounts don't support private repositories with multiple collaborators, we need to share a single ID. For the time being let's use my ID. Type the following command

docker login

Now one will be prompted a user ID and PW. Please type ID: esteshills PW: 82magnolia.

Pull Image

I have already built an image ready for preliminary submission. It can be easily pulled using the following command.

docker pull esteshills/multion_test:tagname

Run Evaluation

To make an evaluation for standard submission, run the following command. Make sure DATA_DIR and ORIG_DATA_DIR from scripts/test_docker.sh are modified before running.

cd scripts/
./test_docker.sh

Playing around with Docker Images

One may want to further examine the docker image. Run the following command.

cd scripts/
./test_docker_bash.sh

Again, make sure DATA_DIR and ORIG_DATA_DIR from scripts/test_docker.sh are modified before running. Note that the commands provided in the MultiON repository can be run inside the container. For example:

python habitat_baselines/run.py --exp-config habitat_baselines/config/multinav/ppo_multinav_no_map.yaml --agent-type no-map --run-type eval

In order to run other baselines, i) modify the checkpoint path in the .yaml file, ii) download the model checkpoint, iii) change the agent type.

Preventing Hassles with Docker (Last Modified: 2021.04.08:09:07)

Now we probably don't need to develop with docker. Just plug in your favorite agent following the instructions provided below.

Plug-and-Play New Agents

One can easily test new agents by providing the file name containing agent implementation. To implement a new agent, please refer to agents/example.py. To test a new agent and get evaluation results, run the following command (this is an example for the no_map baseline).

python evaluate.py --agent_module no_map_walker --exp_config habitat_baselines/config/multinav/ppo_multinav_no_map.yaml --checkpoint_path model_checkpoints/ckpt.0.pth --no_fill

In addition, one can change the number of episodes to be tested. However, this feature is only available in the annotated branch, as it requires a slight modification in the core habitat repository. Run the following command to change the number of episodes. While it will not produce any bugs in the main branch as well, the argument will have no effect.

python evaluate.py --agent_module no_map_walker --exp_config habitat_baselines/config/multinav/ppo_multinav_no_map.yaml --checkpoint_path model_checkpoints/ckpt.0.pth --no_fill --num_episodes 100

Plug-and-Play New Agents from Local Host

Running Agents

Suppose one has some implementations of navigation agents that are not yet pushed to agents/. These could be tested on-the-fly using a handy script provided in scripts. First, put all the agent implementations inside extern_agents/, similar to implementations in agents/. Then run the following command with the agent module you are trying to run, for example if the new agent module is located in extern_agents/new_agent.py, run

./scripts/test_docker_agent.sh new_agent

Make sure the agents are located in the extern_agents/ folder. This way, there is no need to directly hassle with docker; docker is merely used as a black box for running evaluations.

Now suppose one needs to debug the agent in the docker environment. This could be done by running the following script; it will open bash with extern_agents/ mounted.

./scripts/test_docker_agent_bash.sh

To run evaluations inside the docker container, run the following command with the agent module name (in this case new_agent) provided.

./scripts/extern_eval.sh new_agent

Playing Agent Episodes with Video

Agent trajectories per episode can be visualized with the scripts in scripts/. Again, put all the agent implementations inside extern_agents/. Then run the following command with the agent module you are trying to run, for example if the new agent module is located in extern_agents/new_agent.py, run

./scripts/test_docker_agent_video.sh new_agent 

Make sure the mount paths are set correctly inside ./scripts/test_docker_agent_video.sh.

To run evaluations inside the docker container, run the following command with the agent module name (in this case new_agent) and video save directory (in this case ./test_dir) provided.

./scripts/extern_eval_video.sh new_agent ./test_dir

Caveats

The original implementations assume two GPUs to be given. Therefore bugs may occur if only a single GPU is present. In this case do not run the docker scripts directly, as it will return errors. Instead, connect to a docker container with bash and first modify the baseline .yaml configuration so that it only uses a single GPU. Then, run the *_eval*.sh scripts. I am planning on remedying this issue with a similar plug-and-play fashion, but for the time being, stick to this procedure.

OpenGAN: Open-Set Recognition via Open Data Generation

OpenGAN: Open-Set Recognition via Open Data Generation ICCV 2021 (oral) Real-world machine learning systems need to analyze novel testing data that di

Shu Kong 90 Jan 06, 2023
Supplementary code for the experiments described in the 2021 ISMIR submission: Leveraging Hierarchical Structures for Few Shot Musical Instrument Recognition.

Music Trees Supplementary code for the experiments described in the 2021 ISMIR submission: Leveraging Hierarchical Structures for Few Shot Musical Ins

Hugo Flores García 32 Nov 22, 2022
Code for the ICME 2021 paper "Exploring Driving-Aware Salient Object Detection via Knowledge Transfer"

TSOD Code for the ICME 2021 paper "Exploring Driving-Aware Salient Object Detection via Knowledge Transfer" Usage For training, open train_test, run p

Jinming Su 2 Dec 23, 2021
working repo for my xumx-sliCQ submissions to the ISMIR 2021 MDX

Music Demixing Challenge - xumx-sliCQ This repository is the GitHub mirror of my working submission repository for the AICrowd ISMIR 2021 Music Demixi

4 Aug 25, 2021
VolumeGAN - 3D-aware Image Synthesis via Learning Structural and Textural Representations

VolumeGAN - 3D-aware Image Synthesis via Learning Structural and Textural Representations 3D-aware Image Synthesis via Learning Structural and Textura

GenForce: May Generative Force Be with You 116 Dec 26, 2022
Joint Unsupervised Learning (JULE) of Deep Representations and Image Clusters.

Joint Unsupervised Learning (JULE) of Deep Representations and Image Clusters. Overview This project is a Torch implementation for our CVPR 2016 paper

Jianwei Yang 278 Dec 25, 2022
ECCV18 Workshops - Enhanced SRGAN. Champion PIRM Challenge on Perceptual Super-Resolution. The training codes are in BasicSR.

ESRGAN (Enhanced SRGAN) [ 🚀 BasicSR] [Real-ESRGAN] ✨ New Updates. We have extended ESRGAN to Real-ESRGAN, which is a more practical algorithm for rea

Xintao 4.7k Jan 02, 2023
This repo provides the source code & data of our paper "GreaseLM: Graph REASoning Enhanced Language Models"

GreaseLM: Graph REASoning Enhanced Language Models This repo provides the source code & data of our paper "GreaseLM: Graph REASoning Enhanced Language

137 Jan 02, 2023
A novel framework to automatically learn high-quality scanning of non-planar, complex anisotropic appearance.

appearance-scanner About This repository is an implementation of the neural network proposed in Free-form Scanning of Non-planar Appearance with Neura

Xiaohe Ma 14 Oct 18, 2022
HackBMU-5.0-Team-Ctrl-Alt-Elite - HackBMU 5.0 Team Ctrl Alt Elite

HackBMU-5.0-Team-Ctrl-Alt-Elite The search is over. We present to you ‘Health-A-

3 Feb 19, 2022
Torch code for our CVPR 2018 paper "Residual Dense Network for Image Super-Resolution" (Spotlight)

Residual Dense Network for Image Super-Resolution This repository is for RDN introduced in the following paper Yulun Zhang, Yapeng Tian, Yu Kong, Bine

Yulun Zhang 494 Dec 30, 2022
Short and long time series classification using convolutional neural networks

time-series-classification Short and long time series classification via convolutional neural networks In this project, we present a novel framework f

35 Oct 22, 2022
Code for the paper "Query Embedding on Hyper-relational Knowledge Graphs"

Query Embedding on Hyper-Relational Knowledge Graphs This repository contains the code used for the experiments in the paper Query Embedding on Hyper-

DimitrisAlivas 19 Jul 26, 2022
SNIPS: Solving Noisy Inverse Problems Stochastically

SNIPS: Solving Noisy Inverse Problems Stochastically This repo contains the official implementation for the paper SNIPS: Solving Noisy Inverse Problem

Bahjat Kawar 35 Nov 09, 2022
Implementation for Shape from Polarization for Complex Scenes in the Wild

sfp-wild Implementation for Shape from Polarization for Complex Scenes in the Wild project website | paper Code and dataset will be released soon. Int

Chenyang LEI 41 Dec 23, 2022
This repo is to present various code demos on how to use our Graph4NLP library.

Deep Learning on Graphs for Natural Language Processing Demo The repository contains code examples for DLG4NLP tutorials at NAACL 2021, SIGIR 2021, KD

Graph4AI 143 Dec 23, 2022
Spatial Transformer Nets in TensorFlow/ TensorLayer

MOVED TO HERE Spatial Transformer Networks Spatial Transformer Networks (STN) is a dynamic mechanism that produces transformations of input images (or

Hao 36 Nov 23, 2022
Clockwork Convnets for Video Semantic Segmentation

Clockwork Convnets for Video Semantic Segmentation This is the reference implementation of arxiv:1608.03609: Clockwork Convnets for Video Semantic Seg

Evan Shelhamer 141 Nov 21, 2022
Official implementation of "UCTransNet: Rethinking the Skip Connections in U-Net from a Channel-wise Perspective with Transformer"

[AAAI2022] UCTransNet This repo is the official implementation of "UCTransNet: Rethinking the Skip Connections in U-Net from a Channel-wise Perspectiv

Haonan Wang 199 Jan 03, 2023