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  4. VIODE: A Simulated Dataset to Address the Challenges of Visual-Inertial Odometry in Dynamic Environments
 
research article

VIODE: A Simulated Dataset to Address the Challenges of Visual-Inertial Odometry in Dynamic Environments

Minoda, Koji
•
Schilling, Fabian  
•
Wüest, Valentin  
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March 15, 2021
IEEE Robotics and Automation Letters

Dynamic environments such as urban areas are still challenging for popular visual-inertial odometry (VIO) algorithms. Existing datasets typically fail to capture the dynamic nature of these environments, therefore making it difficult to quantitatively evaluate the robustness of existing VIO methods. To address this issue, we propose three contributions: firstly, we provide the VIODE benchmark, a novel dataset recorded from a simulated UAV that navigates in challenging dynamic environments. The unique feature of the VIODE dataset is the systematic introduction of moving objects into the scenes. It includes three environments, each of which is available in four dynamic levels that progressively add moving objects. The dataset contains synchronized stereo images and IMU data, as well as ground-truth trajectories and instance segmentation masks. Secondly, we compare state-of-the-art VIO algorithms on the VIODE dataset and show that they display substantial performance degradation in highly dynamic scenes. Thirdly, we propose a simple extension for visual localization algorithms that relies on semantic information. Our results show that scene semantics are an effective way to mitigate the adverse effects of dynamic objects on VIO algorithms. Finally, we make the VIODE dataset publicly available at https://github.com/kminoda/VIODE.

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Type
research article
DOI
10.1109/LRA.2021.3058073
ArXiv ID

2102.05965

Author(s)
Minoda, Koji
Schilling, Fabian  
Wüest, Valentin  
Floreano, Dario  
Yairi, Takehisa
Date Issued

2021-03-15

Published in
IEEE Robotics and Automation Letters
Volume

6

Issue

2

Start page

1343

End page

1350

Subjects

Data sets for SLAM

•

visual-inertial SLAM

•

aerial systems: perception and autonomy

URL

YouTube video

https://youtu.be/LlFTyQf_dlo

GitHub repository

https://github.com/kminoda/VIODE

YouTube video

https://youtu.be/LlFTyQf_dlo

GitHub repository

https://github.com/kminoda/VIODE
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LIS  
FunderGrant Number

FNS

200021-155907

FNS-NCCR

NCCR Robotics

Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/175969
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