AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles
Inertial measurement units (IMUs) suffer from bias and measurement noise, which makes it much more complicated to tackle the problem of inertial odometry (IO). Due to the error propagation over time, while estimating robot position, an inaccurate estimation or a small error will cause the odometry a...
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sg-ntu-dr.10356-1553292022-03-18T06:25:15Z AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles Esfahani, Mahdi Abolfazli Wang, Han Wu, Keyu Yuan, Shenghai School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Inertial Odometry Inertial Measurement Unit Inertial measurement units (IMUs) suffer from bias and measurement noise, which makes it much more complicated to tackle the problem of inertial odometry (IO). Due to the error propagation over time, while estimating robot position, an inaccurate estimation or a small error will cause the odometry and a localization system unreliable and unusable in a split of seconds. This paper presents a novel triple-channel deep IO network architecture based on the physical and mathematical models of IMUs. The proposed method simulates the noise model in the training phase and becomes robust to noise during testing. Besides, the proposed network architecture also considers the time interval between two consecutive IMU readings (sampling time) so that it is robust to the change of IMU frequency and the missing of IMU information. To the best of our knowledge, this paper is the first work reviewing and analyzing the existing IO methods used by the deep-learning-based visual-IO approaches. The proposed network architecture outperforms all the existing solutions on the IMU readings of the challenging Micro Aerial Vehicle dataset and improves the accuracy by approximately 25%. 2022-03-18T06:25:15Z 2022-03-18T06:25:15Z 2020 Journal Article Esfahani, M. A., Wang, H., Wu, K. & Yuan, S. (2020). AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles. IEEE Transactions On Intelligent Transportation Systems, 21(5), 1941-1950. https://dx.doi.org/10.1109/TITS.2019.2909064 1524-9050 https://hdl.handle.net/10356/155329 10.1109/TITS.2019.2909064 2-s2.0-85084746243 5 21 1941 1950 en IEEE Transactions on Intelligent Transportation Systems © 2019 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Inertial Odometry Inertial Measurement Unit Esfahani, Mahdi Abolfazli Wang, Han Wu, Keyu Yuan, Shenghai AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
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Inertial measurement units (IMUs) suffer from bias and measurement noise, which makes it much more complicated to tackle the problem of inertial odometry (IO). Due to the error propagation over time, while estimating robot position, an inaccurate estimation or a small error will cause the odometry and a localization system unreliable and unusable in a split of seconds. This paper presents a novel triple-channel deep IO network architecture based on the physical and mathematical models of IMUs. The proposed method simulates the noise model in the training phase and becomes robust to noise during testing. Besides, the proposed network architecture also considers the time interval between two consecutive IMU readings (sampling time) so that it is robust to the change of IMU frequency and the missing of IMU information. To the best of our knowledge, this paper is the first work reviewing and analyzing the existing IO methods used by the deep-learning-based visual-IO approaches. The proposed network architecture outperforms all the existing solutions on the IMU readings of the challenging Micro Aerial Vehicle dataset and improves the accuracy by approximately 25%. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Esfahani, Mahdi Abolfazli Wang, Han Wu, Keyu Yuan, Shenghai |
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Article |
author |
Esfahani, Mahdi Abolfazli Wang, Han Wu, Keyu Yuan, Shenghai |
author_sort |
Esfahani, Mahdi Abolfazli |
title |
AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
title_short |
AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
title_full |
AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
title_fullStr |
AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
title_full_unstemmed |
AbolDeepIO : a novel deep inertial odometry network for autonomous vehicles |
title_sort |
aboldeepio : a novel deep inertial odometry network for autonomous vehicles |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/155329 |
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1728433381230772224 |