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On the Accuracy and Efficiency of Sensing and Localization for Robotics

Wei, Zhuangkun; Li, Bin; Guo, Weisi; Hu, Wenxiu; Zhao, Chenglin

Authors

Bin Li

Weisi Guo

Wenxiu Hu

Chenglin Zhao



Abstract

In recent robotic applications, a critical need is to simultaneously detect communication (emission state) and estimate its trajectory. Whilst wireless sensor observations are useful, they are often uncertain due to the stochastic communication bursts and robot mobility. Over-sampling the information environment can incur excessive radio interference and energy usage. Therefore, one challenge is how to improve the efficiency of sensing under sparse and dynamic information, and make accurate inference on the robot's location. Here, we design a novel mixed detection and estimation (MDE) scheme to enhance both the accuracy and the efficiency by exploiting the mobility pattern correlations. Relying on a Markov state-space model, dynamic behaviors of robot's communication state and movement are formulated. A two-stage sequential Bayesian scheme, premised on random finite set (RFS), is developed to detect and estimate the involved unknown states. Specifically, in order to counteract the probability likelihood disappearance (caused by no information emission) and improve robustness to ambient noise, a sequential pre-filtering technique is designed, which can refine local observations and thereby significantly improve the accuracy of the system. We validate the proposed MDE scheme via both theoretical analysis and numerical simulations, demonstrating it would improve both the detection and estimation accuracy and efficiency.

Citation

Wei, Z., Li, B., Guo, W., Hu, W., & Zhao, C. (2022). On the Accuracy and Efficiency of Sensing and Localization for Robotics. IEEE Transactions on Mobile Computing, 21(7), 2480-2492. https://doi.org/10.1109/tmc.2020.3038146

Journal Article Type Article
Online Publication Date Nov 13, 2020
Publication Date Jul 1, 2022
Deposit Date Feb 12, 2025
Journal IEEE Transactions on Mobile Computing
Print ISSN 1536-1233
Electronic ISSN 1558-0660
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
Volume 21
Issue 7
Pages 2480-2492
DOI https://doi.org/10.1109/tmc.2020.3038146
Public URL https://durham-repository.worktribe.com/output/3479200