GPS/odometry/map fusion for vehicle positioning using potential function
In this paper, we present a fusion approach to localize urban vehicles by integrating a visual odometry, a low-cost GPS, and a two-dimensional digital road map. Distinguished from conventional sensor fusion methods, two types of potential functions (i.e. potential wells and potential trenches) are p...
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sg-ntu-dr.10356-1383962020-05-05T09:26:56Z GPS/odometry/map fusion for vehicle positioning using potential function Jiang, Rui Yang, Shuai Ge, Shuzhi Sam Liu, Xiaomei Wang, Han Lee, Tong Heng School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Digital Maps GPS In this paper, we present a fusion approach to localize urban vehicles by integrating a visual odometry, a low-cost GPS, and a two-dimensional digital road map. Distinguished from conventional sensor fusion methods, two types of potential functions (i.e. potential wells and potential trenches) are proposed to represent measurements and constraints, respectively. By choosing different potential functions according to data properties, data from various sensors can be integrated with intuitive understanding, while no extra map matching is required. The minimum of fused potential, which is regarded as position estimation, is confined such that fast minimum searching can be achieved. Experiments under realistic conditions have been conducted to validate the satisfactory positioning accuracy and robustness compared to pure visual odometry and map matching methods. 2020-05-05T09:26:56Z 2020-05-05T09:26:56Z 2017 Journal Article Jiang, R., Yang, S., Ge, S. S., Liu, X., Wang, H., & Lee, T. H. (2018). GPS/odometry/map fusion for vehicle positioning using potential function. Autonomous Robots, 42, 99-110. doi:10.1007/s10514-017-9646-9 0929-5593 https://hdl.handle.net/10356/138396 10.1007/s10514-017-9646-9 2-s2.0-85020736671 42 99 110 en Autonomous Robots This is a post-peer-review, pre-copyedit version of an article published in Autonomous Robots. The final authenticated version is available online at: http://dx.doi.org/10.1007/s10514-017-9646-9 |
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Engineering::Electrical and electronic engineering Digital Maps GPS Jiang, Rui Yang, Shuai Ge, Shuzhi Sam Liu, Xiaomei Wang, Han Lee, Tong Heng GPS/odometry/map fusion for vehicle positioning using potential function |
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In this paper, we present a fusion approach to localize urban vehicles by integrating a visual odometry, a low-cost GPS, and a two-dimensional digital road map. Distinguished from conventional sensor fusion methods, two types of potential functions (i.e. potential wells and potential trenches) are proposed to represent measurements and constraints, respectively. By choosing different potential functions according to data properties, data from various sensors can be integrated with intuitive understanding, while no extra map matching is required. The minimum of fused potential, which is regarded as position estimation, is confined such that fast minimum searching can be achieved. Experiments under realistic conditions have been conducted to validate the satisfactory positioning accuracy and robustness compared to pure visual odometry and map matching methods. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Jiang, Rui Yang, Shuai Ge, Shuzhi Sam Liu, Xiaomei Wang, Han Lee, Tong Heng |
format |
Article |
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Jiang, Rui Yang, Shuai Ge, Shuzhi Sam Liu, Xiaomei Wang, Han Lee, Tong Heng |
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Jiang, Rui |
title |
GPS/odometry/map fusion for vehicle positioning using potential function |
title_short |
GPS/odometry/map fusion for vehicle positioning using potential function |
title_full |
GPS/odometry/map fusion for vehicle positioning using potential function |
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GPS/odometry/map fusion for vehicle positioning using potential function |
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GPS/odometry/map fusion for vehicle positioning using potential function |
title_sort |
gps/odometry/map fusion for vehicle positioning using potential function |
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2020 |
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https://hdl.handle.net/10356/138396 |
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1681059738141327360 |