This is the dataset for testing the robustness of various VO/VIO methods

Overview

KAIST VIO dataset


This is the dataset for testing the robustness of various VO/VIO methods

You can download the whole dataset on KAIST VIO dataset



Index

1. Trajectories

2. Downloads

3. Dataset format

4. Setup



1. Trajectories


  • Four different trajectories: circle, infinity, square, and pure_rotation.
  • Each trajectory has three types of sequence: normal speed, fast speed, and rotation.
  • The pure rotation sequence has only normal speed, fast speed types

2. Downloads

You can download a single ROS bag file from the link below. (or whole dataset from KAIST VIO dataset)

Trajectory Type ROS bag download
circle normal
fast
rotation
link
link
link
infinity normal
fast
rotation
link
link
link
square normal
fast
rotation
link
link
link
rotation normal
fast
link
link



3. Dataset format


  • Each set of data is recorded as a ROS bag file.
  • Each data sequence contains the followings:
    • stereo infra images (w/ emitter turned off)
    • mono RGB image
    • IMU data (3-axes accelerometer, 3-axes gyroscopes)
    • 6-DOF Ground-Truth
  • ROS topic
    • Camera(30 Hz): "/camera/infra1(2)/image_rect_raw/compressed", "/camera/color/image_raw/compressed"
    • IMU(100 Hz): "/mavros/imu/data"
    • Ground-Truth(50 Hz): "/pose_transformed"
  • In the config directory
    • trans-mat.yaml: translational matrix between the origin of the Ground-Truth and the VI sensor unit.
      (the offset has already been applied to the bag data, and this YAML file has estimated offset values, just for reference. To benchmark your VO/VIO method more accurately, you can use your alignment method with other tools, like origin alignment or Umeyama alignment from evo)
    • imu-params.yaml: estimated noise parameters of Pixhawk 4 mini
    • cam-imu.yaml: Camera intrinsics, Camera-IMU extrinsics in kalibr format



4. Setup

- Hardware


                Fig.1 Lab Environment                                        Fig.2 UAV platform
  • VI sensor unit
    • camera: Intel Realsense D435i (640x480 for infra 1,2 & RGB images)
    • IMU: Pixhawk 4 mini
    • VI sensor unit was calibrated by using kalibr

  • Ground-Truth
    • OptiTrack PrimeX 13 motion capture system with six cameras was used
    • including 6-DOF motion information.

- Software (VO/VIO Algorithms): How to set each (publicly available) algorithm on the jetson board

VO/VIO Setup link
VINS-Mono link
ROVIO link
VINS-Fusion link
Stereo-MSCKF link
Kimera link

5. Citing

If you use the dataset in an academic context, please cite the following publication:

@article{jeon2021run,
title={Run Your Visual-Inertial Odometry on NVIDIA Jetson: Benchmark Tests on a Micro Aerial Vehicle},
author={Jeon, Jinwoo and Jung, Sungwook and Lee, Eungchang and Choi, Duckyu and Myung, Hyun},
journal={arXiv preprint arXiv:2103.01655},
year={2021}
}

6. Lisence

This datasets are released under the Creative Commons license (CC BY-NC-SA 3.0), which is free for non-commercial use (including research).

Owner
Jinwoo Jeon. KAIST Master degree candidate (Electrical Engineering)
Answer a series of contextually-dependent questions like they may occur in natural human-to-human conversations.

SCAI-QReCC-21 [leaderboards] [registration] [forum] [contact] [SCAI] Answer a series of contextually-dependent questions like they may occur in natura

19 Sep 28, 2022
RTSeg: Real-time Semantic Segmentation Comparative Study

Real-time Semantic Segmentation Comparative Study The repository contains the official TensorFlow code used in our papers: RTSEG: REAL-TIME SEMANTIC S

Mennatullah Siam 592 Nov 18, 2022
Curvlearn, a Tensorflow based non-Euclidean deep learning framework.

English | 简体中文 Why Non-Euclidean Geometry Considering these simple graph structures shown below. Nodes with same color has 2-hop distance whereas 1-ho

Alibaba 123 Dec 12, 2022
Algorithmic trading using machine learning.

Algorithmic Trading This machine learning algorithm was built using Python 3 and scikit-learn with a Decision Tree Classifier. The program gathers sto

Sourav Biswas 101 Nov 10, 2022
Pretrained SOTA Deep Learning models, callbacks and more for research and production with PyTorch Lightning and PyTorch

Pretrained SOTA Deep Learning models, callbacks and more for research and production with PyTorch Lightning and PyTorch

Pytorch Lightning 1.4k Jan 01, 2023
Justmagic - Use a function as a method with this mystic script, like in Nim

justmagic Use a function as a method with this mystic script, like in Nim. Just

witer33 8 Oct 08, 2022
Official repo for our 3DV 2021 paper "Monocular 3D Reconstruction of Interacting Hands via Collision-Aware Factorized Refinements".

Monocular 3D Reconstruction of Interacting Hands via Collision-Aware Factorized Refinements Yu Rong, Jingbo Wang, Ziwei Liu, Chen Change Loy Paper. Pr

Yu Rong 41 Dec 13, 2022
The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate.

The lightweight PyTorch wrapper for high-performance AI research. Scale your models, not the boilerplate. Website • Key Features • How To Use • Docs •

Pytorch Lightning 21.1k Dec 29, 2022
Trading Gym is an open source project for the development of reinforcement learning algorithms in the context of trading.

Trading Gym Trading Gym is an open-source project for the development of reinforcement learning algorithms in the context of trading. It is currently

Dimitry Foures 535 Nov 15, 2022
Code for "Diversity can be Transferred: Output Diversification for White- and Black-box Attacks"

Output Diversified Sampling (ODS) This is the github repository for the NeurIPS 2020 paper "Diversity can be Transferred: Output Diversification for W

50 Dec 11, 2022
Applicator Kit for Modo allow you to apply Apple ARKit Face Tracking data from your iPhone or iPad to your characters in Modo.

Applicator Kit for Modo Applicator Kit for Modo allow you to apply Apple ARKit Face Tracking data from your iPhone or iPad with a TrueDepth camera to

Andrew Buttigieg 3 Aug 24, 2021
A PyTorch Lightning Callback for pushing models to the Hugging Face Hub 🤗⚡️

hf-hub-lightning A callback for pushing lightning models to the Hugging Face Hub. Note: I made this package for myself, mostly...if folks seem to be i

Nathan Raw 27 Dec 14, 2022
A Java implementation of the experiments for the paper "k-Center Clustering with Outliers in Sliding Windows"

OutliersSlidingWindows A Java implementation of the experiments for the paper "k-Center Clustering with Outliers in Sliding Windows" Dataset generatio

PaoloPellizzoni 0 Jan 05, 2022
A semismooth Newton method for elliptic PDE-constrained optimization

sNewton4PDEOpt The Python module implements a semismooth Newton method for solving finite-element discretizations of the strongly convex, linear ellip

2 Dec 08, 2022
Supplementary code for SIGGRAPH 2021 paper: Discovering Diverse Athletic Jumping Strategies

SIGGRAPH 2021: Discovering Diverse Athletic Jumping Strategies project page paper demo video Prerequisites Important Notes We suspect there are bugs i

54 Dec 06, 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
LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs

LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs This is the code for the LERP. Dataset The dataset used is MI

5 Jun 18, 2022
The Multi-Mission Maximum Likelihood framework (3ML)

PyPi Conda The Multi-Mission Maximum Likelihood framework (3ML) A framework for multi-wavelength/multi-messenger analysis for astronomy/astrophysics.

The Multi-Mission Maximum Likelihood (3ML) 62 Dec 30, 2022
Simple, but essential Bayesian optimization package

BayesO: A Bayesian optimization framework in Python Simple, but essential Bayesian optimization package. http://bayeso.org Online documentation Instal

Jungtaek Kim 74 Dec 05, 2022
Numerical-computing-is-fun - Learning numerical computing with notebooks for all ages.

As much as this series is to educate aspiring computer programmers and data scientists of all ages and all backgrounds, it is also a reminder to mysel

EKA foundation 758 Dec 25, 2022