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Learning Kalman Network: A deep monocular visual odometry for on-road driving

Version 4 2024-03-12, 19:11
Version 3 2023-10-29, 15:54
journal contribution
posted on 2024-03-12, 19:11 authored by Cheng Zhao, Li Sun, Zhi Yan, Gerhard Neumann, Tom Duckett, Rustam Stolkin
<p>This paper proposes a Learning Kalman Network (LKN) based monocular visual odometry (VO), i.e. LKN-VO, for on-road driving. Most existing learning-based VO focus on ego-motion estimation by comparing the two most recent consecutive frames. By contrast, the LKN-VO incorporates a learning ego-motion estimation through the current measurement, and a discriminative state estimator through a sequence of previous measurements. Superior to the model-based monocular VO, a more accurate absolute scale can be learned by LKN without any geometric constraints. In contrast to the model-based Kalman Filter (KF), the optimal model parameters of LKN can be obtained from dynamic and deterministic outputs of the neural network without elaborate human design. LKN is a hybrid approach where we achieve the non-linearity of the observation model and the transition model though deep neural networks, and update the state following the Kalman probabilistic mechanism. In contrast to the learning-based state estimator, a sparse representation is further proposed to learn the correlations within the states from the car’s movement behaviour, thereby applying better filtering on the 6DOF trajectory for on-road driving. The experimental results show that the proposed LKN-VO outperforms both model-based and learning state-estimator-based monocular VO on the most well-cited on-road driving datasets, i.e. KITTI and Apolloscape. In addition, LKN-VO is integrated with dense 3D mapping, which can be deployed for simultaneous localization and mapping in urban environments.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Robotics and Autonomous Systems

Volume

121

Pages/Article Number

103234

Publisher

Elsevier

ISSN

0921-8890

Date Submitted

2020-12-14

Date Accepted

2019-07-08

Date of First Publication

2019-07-25

Date of Final Publication

2019-11-01

Date Document First Uploaded

2020-12-14

ePrints ID

43351

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