Geometry-Aware Learning of Maps for Camera Localization (CVPR2018)

Overview

License CC BY-NC-SA 4.0 Python 2.7

Geometry-Aware Learning of Maps for Camera Localization

This is the PyTorch implementation of our CVPR 2018 paper

"Geometry-Aware Learning of Maps for Camera Localization" - CVPR 2018 (Spotlight). Samarth Brahmbhatt, Jinwei Gu, Kihwan Kim, James Hays, and Jan Kautz

A four-minute video summary (click below for the video)

mapnet

Citation

If you find this code useful for your research, please cite our paper

@inproceedings{mapnet2018,
  title={Geometry-Aware Learning of Maps for Camera Localization},
  author={Samarth Brahmbhatt and Jinwei Gu and Kihwan Kim and James Hays and Jan Kautz},
  booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2018}
}

Table of Contents

Documentation

Setup

MapNet uses a Conda environment that makes it easy to install all dependencies.

  1. Install miniconda with Python 2.7.

  2. Create the mapnet Conda environment: conda env create -f environment.yml.

  3. Activate the environment: conda activate mapnet_release.

  4. Note that our code has been tested with PyTorch v0.4.1 (the environment.yml file should take care of installing the appropriate version).

Data

We support the 7Scenes and Oxford RobotCar datasets right now. You can also write your own PyTorch dataloader for other datasets and put it in the dataset_loaders directory. Refer to this README file for more details.

The datasets live in the data/deepslam_data directory. We provide skeletons with symlinks to get you started. Let us call your 7Scenes download directory 7SCENES_DIR and your main RobotCar download directory (in which you untar all the downloads from the website) ROBOTCAR_DIR. You will need to make the following symlinks:

cd data/deepslam_data && ln -s 7SCENES_DIR 7Scenes && ln -s ROBOTCAR_DIR RobotCar_download


Special instructions for RobotCar: (only needed for RobotCar data)

  1. Download this fork of the dataset SDK, and run cd scripts && ./make_robotcar_symlinks.sh after editing the ROBOTCAR_SDK_ROOT variable in it appropriately.

  2. For each sequence, you need to download the stereo_centre, vo and gps tar files from the dataset website (more details in this comment).

  3. The directory for each 'scene' (e.g. full) has .txt files defining the train/test split. While training MapNet++, you must put the sequences for self-supervised learning (dataset T in the paper) in the test_split.txt file. The dataloader for the MapNet++ models will use both images and ground-truth pose from sequences in train_split.txt and only images from the sequences in test_split.txt.

  4. To make training faster, we pre-processed the images using scripts/process_robotcar_images.py. This script undistorts the images using the camera models provided by the dataset, and scales them such that the shortest side is 256 pixels.


Running the code

Demo/Inference

The trained models for all experiments presented in the paper can be downloaded here. The inference script is scripts/eval.py. Here are some examples, assuming the models are downloaded in scripts/logs. Please go to the scripts folder to run the commands.

7_Scenes

  • MapNet++ with pose-graph optimization (i.e., MapNet+PGO) on heads:
$ python eval.py --dataset 7Scenes --scene heads --model mapnet++ \
--weights logs/7Scenes_heads_mapnet++_mapnet++_7Scenes/epoch_005.pth.tar \
--config_file configs/pgo_inference_7Scenes.ini --val --pose_graph
Median error in translation = 0.12 m
Median error in rotation    = 8.46 degrees

7Scenes_heads_mapnet+pgo

  • For evaluating on the train split remove the --val flag

  • To save the results to disk without showing them on screen (useful for scripts), add the --output_dir ../results/ flag

  • See this README file for more information on hyper-parameters and which config files to use.

  • MapNet++ on heads:

$ python eval.py --dataset 7Scenes --scene heads --model mapnet++ \
--weights logs/7Scenes_heads_mapnet++_mapnet++_7Scenes/epoch_005.pth.tar \
--config_file configs/mapnet.ini --val
Median error in translation = 0.13 m
Median error in rotation    = 11.13 degrees
  • MapNet on heads:
$ python eval.py --dataset 7Scenes --scene heads --model mapnet \
--weights logs/7Scenes_heads_mapnet_mapnet_learn_beta_learn_gamma/epoch_250.pth.tar \
--config_file configs/mapnet.ini --val
Median error in translation = 0.18 m
Median error in rotation    = 13.33 degrees
  • PoseNet (CVPR2017) on heads:
$ python eval.py --dataset 7Scenes --scene heads --model posenet \
--weights logs/7Scenes_heads_posenet_posenet_learn_beta_logq/epoch_300.pth.tar \
--config_file configs/posenet.ini --val
Median error in translation = 0.19 m
Median error in rotation    = 12.15 degrees

RobotCar

  • MapNet++ with pose-graph optimization on loop:
$ python eval.py --dataset RobotCar --scene loop --model mapnet++ \
--weights logs/RobotCar_loop_mapnet++_mapnet++_RobotCar_learn_beta_learn_gamma_2seq/epoch_005.pth.tar \
--config_file configs/pgo_inference_RobotCar.ini --val --pose_graph
Mean error in translation = 6.74 m
Mean error in rotation    = 2.23 degrees

RobotCar_loop_mapnet+pgo

  • MapNet++ on loop:
$ python eval.py --dataset RobotCar --scene loop --model mapnet++ \
--weights logs/RobotCar_loop_mapnet++_mapnet++_RobotCar_learn_beta_learn_gamma_2seq/epoch_005.pth.tar \
--config_file configs/mapnet.ini --val
Mean error in translation = 6.95 m
Mean error in rotation    = 2.38 degrees
  • MapNet on loop:
$ python eval.py --dataset RobotCar --scene loop --model mapnet \
--weights logs/RobotCar_loop_mapnet_mapnet_learn_beta_learn_gamma/epoch_300.pth.tar \
--config_file configs/mapnet.ini --val
Mean error in translation = 9.84 m
Mean error in rotation    = 3.96 degrees

Train

The executable script is scripts/train.py. Please go to the scripts folder to run these commands. For example:

  • PoseNet on chess from 7Scenes: python train.py --dataset 7Scenes --scene chess --config_file configs/posenet.ini --model posenet --device 0 --learn_beta --learn_gamma

train.png

  • MapNet on chess from 7Scenes: python train.py --dataset 7Scenes --scene chess --config_file configs/mapnet.ini --model mapnet --device 0 --learn_beta --learn_gamma

  • MapNet++ is finetuned on top of a trained MapNet model: python train.py --dataset 7Scenes --checkpoint <trained_mapnet_model.pth.tar> --scene chess --config_file configs/mapnet++_7Scenes.ini --model mapnet++ --device 0 --learn_beta --learn_gamma

For example, we can train MapNet++ model on heads from a pretrained MapNet model:

$ python train.py --dataset 7Scenes \
--checkpoint logs/7Scenes_heads_mapnet_mapnet_learn_beta_learn_gamma/epoch_250.pth.tar \
--scene heads --config_file configs/mapnet++_7Scenes.ini --model mapnet++ \
--device 0 --learn_beta --learn_gamma

For MapNet++ training, you will need visual odometry (VO) data (or other sensory inputs such as noisy GPS measurements). For 7Scenes, we provided the preprocessed VO computed with the DSO method. For RobotCar, we use the provided stereo_vo. If you plan to use your own VO data (especially from a monocular camera) for MapNet++ training, you will need to first align the VO with the world coordinate (for rotation and scale). Please refer to the "Align VO" section below for more detailed instructions.

The meanings of various command-line parameters are documented in scripts/train.py. The values of various hyperparameters are defined in a separate .ini file. We provide some examples in the scripts/configs directory, along with a README file explaining some hyper-parameters.

If you have visdom = yes in the config file, you will need to start a Visdom server for logging the training progress:

python -m visdom.server -env_path=scripts/logs/.


Network Attention Visualization

Calculates the network attention visualizations and saves them in a video

  • For the MapNet model trained on chess in 7Scenes:
$ python plot_activations.py --dataset 7Scenes --scene chess
--weights <filename.pth.tar> --device 1 --val --config_file configs/mapnet.ini
--output_dir ../results/

Check here for an example video of computed network attention of PoseNet vs. MapNet++.


Other Tools

Align VO to the ground truth poses

This has to be done before using VO in MapNet++ training. The executable script is scripts/align_vo_poses.py.

  • For the first sequence from chess in 7Scenes: python align_vo_poses.py --dataset 7Scenes --scene chess --seq 1 --vo_lib dso. Note that alignment for 7Scenes needs to be done separately for each sequence, and so the --seq flag is needed

  • For all 7Scenes you can also use the script align_vo_poses_7scenes.sh The script stores the information at the proper location in data

Mean and stdev pixel statistics across a dataset

This must be calculated before any training. Use the scripts/dataset_mean.py, which also saves the information at the proper location. We provide pre-computed values for RobotCar and 7Scenes.

Calculate pose translation statistics

Calculates the mean and stdev and saves them automatically to appropriate files python calc_pose_stats.py --dataset 7Scenes --scene redkitchen This information is needed to normalize the pose regression targets, so this script must be run before any training. We provide pre-computed values for RobotCar and 7Scenes.

Plot the ground truth and VO poses for debugging

python plot_vo_poses.py --dataset 7Scenes --scene heads --vo_lib dso --val. To save the output instead of displaying on screen, add the --output_dir ../results/ flag

Process RobotCar GPS

The scripts/process_robotcar_gps.py script must be run before using GPS for MapNet++ training. It converts the csv file into a format usable for training.

Demosaic and undistort RobotCar images

This is advisable to do beforehand to speed up training. The scripts/process_robotcar_images.py script will do that and save the output images to a centre_processed directory in the stereo directory. After the script finishes, you must rename this directory to centre so that the dataloader uses these undistorted and demosaiced images.

FAQ

Collection of issues and resolution comments that might be useful:

License

Copyright (C) 2018 NVIDIA Corporation. All rights reserved. Licensed under the CC BY-NC-SA 4.0 license (https://creativecommons.org/licenses/by-nc-sa/4.0/legalcode).

Owner
NVIDIA Research Projects
NVIDIA Research Projects
BABEL: Bodies, Action and Behavior with English Labels [CVPR 2021]

BABEL is a large dataset with language labels describing the actions being performed in mocap sequences. BABEL labels about 43 hours of mocap sequences from AMASS [1] with action labels.

113 Dec 28, 2022
Dynamic hair modeling from monocular videos using deep neural networks

Dynamic Hair Modeling The source code of the networks for our paper "Dynamic hair modeling from monocular videos using deep neural networks" (SIGGRAPH

53 Oct 18, 2022
Simple command line tool for text to image generation using OpenAI's CLIP and Siren (Implicit neural representation network)

Deep Daze mist over green hills shattered plates on the grass cosmic love and attention a time traveler in the crowd life during the plague meditative

Phil Wang 4.4k Jan 03, 2023
Semi-supervised Learning for Sentiment Analysis

Neural-Semi-supervised-Learning-for-Text-Classification-Under-Large-Scale-Pretraining Code, models and Datasets for《Neural Semi-supervised Learning fo

47 Jan 01, 2023
LegoDNN: a block-grained scaling tool for mobile vision systems

Table of contents 1 Introduction 1.1 Major features 1.2 Architecture 2 Code and Installation 2.1 Code 2.2 Installation 3 Repository of DNNs in vision

41 Dec 24, 2022
Use stochastic processes to generate samples and use them to train a fully-connected neural network based on Keras

Use stochastic processes to generate samples and use them to train a fully-connected neural network based on Keras which will then be used to generate residuals

Federico Lopez 2 Jan 14, 2022
[CVPR 2021] Modular Interactive Video Object Segmentation: Interaction-to-Mask, Propagation and Difference-Aware Fusion

[CVPR 2021] Modular Interactive Video Object Segmentation: Interaction-to-Mask, Propagation and Difference-Aware Fusion

Rex Cheng 364 Jan 03, 2023
CS50x-AI - Artificial Intelligence with Python from Harvard University

CS50x-AI Artificial Intelligence with Python from Harvard University 📖 Table of

Hosein Damavandi 6 Aug 22, 2022
It helps user to learn Pick-up lines and share if he has a better one

Pick-up-Lines-Generator(Open Source) It helps user to learn Pick-up lines Share and Add one or many to the DataBase Unique SQLite DataBase AI Undercon

knock_nott 0 May 04, 2022
Official PyTorch implementation of "Improving Face Recognition with Large AgeGaps by Learning to Distinguish Children" (BMVC 2021)

Inter-Prototype (BMVC 2021): Official Project Webpage This repository provides the official PyTorch implementation of the following paper: Improving F

Jungsoo Lee 16 Jun 30, 2022
PyTorch code for Composing Partial Differential Equations with Physics-Aware Neural Networks

FInite volume Neural Network (FINN) This repository contains the PyTorch code for models, training, and testing, and Python code for data generation t

Cognitive Modeling 20 Dec 18, 2022
Reproduced Code for Image Forgery Detection papers.

Image Forgery Detection With over 4.5 billion active internet users, the amount of multimedia content being shared every day has surpassed everyone’s

Umar Masud 15 Dec 06, 2022
Resources related to EMNLP 2021 paper "FAME: Feature-Based Adversarial Meta-Embeddings for Robust Input Representations"

FAME: Feature-based Adversarial Meta-Embeddings This is the companion code for the experiments reported in the paper "FAME: Feature-Based Adversarial

Bosch Research 11 Nov 27, 2022
Progressive Growing of GANs for Improved Quality, Stability, and Variation

Progressive Growing of GANs for Improved Quality, Stability, and Variation — Official TensorFlow implementation of the ICLR 2018 paper Tero Karras (NV

Tero Karras 5.9k Jan 05, 2023
[EMNLP 2021] Distantly-Supervised Named Entity Recognition with Noise-Robust Learning and Language Model Augmented Self-Training

RoSTER The source code used for Distantly-Supervised Named Entity Recognition with Noise-Robust Learning and Language Model Augmented Self-Training, p

Yu Meng 60 Dec 30, 2022
Creative Applications of Deep Learning w/ Tensorflow

Creative Applications of Deep Learning w/ Tensorflow This repository contains lecture transcripts and homework assignments as Jupyter Notebooks for th

Parag K Mital 1.5k Dec 30, 2022
A library for building and serving multi-node distributed faiss indices.

About Distributed faiss index service. A lightweight library that lets you work with FAISS indexes which don't fit into a single server memory. It fol

Meta Research 170 Dec 30, 2022
Tool which allow you to detect and translate text.

Text detection and recognition This repository contains tool which allow to detect region with text and translate it one by one. Description Two pretr

Damian Panek 176 Nov 28, 2022
Deep Learning Package based on TensorFlow

White-Box-Layer is a Python module for deep learning built on top of TensorFlow and is distributed under the MIT license. The project was started in M

YeongHyeon Park 7 Dec 27, 2021
Data pipelines for both TensorFlow and PyTorch!

rapidnlp-datasets Data pipelines for both TensorFlow and PyTorch ! If you want to load public datasets, try: tensorflow/datasets huggingface/datasets

1 Dec 08, 2021