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A Data-Fusion Method using Bayesian Approach to Enhance Raw Data Accuracy of Position and Distance Measurements for Connected...

by Hyeonsup Lim, Bumjoon Bae, Lee Han, Shih-miao Chin, Ho-ling L Hwang
Publication Type
Conference Paper
Journal Name
IEEE International Symposium on Integrated Network Management
Book Title
2021 IFIP/IEEE International Symposium on Integrated Network Management (IM)
Publication Date
Page Numbers
1018 to 1023
Issue
1573-0077
Publisher Location
District of Columbia, United States of America
Conference Name
IFIP/IEEE International Symposium on Integrated Network Management (IM 2021)
Conference Location
Bordeaux, France
Conference Sponsor
IEEE
Conference Date
-

Accurate positioning of vehicles is a critical element of autonomous and connected vehicle systems. Most of other studies heavily focused on enhancing simultaneous localization and mapping (SLAM) methods, i.e., constructing or updating a map of an unknown environment and tracking an object within the map. This paper provides a method that can, in addition to existing SLAM or relevant methods, enhance the raw measurements of position and distance. The basic idea of this study is to identify and update the error distribution of each data source by combining all available information. A Bayesian approach was incorporated to estimate and update the error distribution of individual data sources or sensors. The proposed method can be conducted in real-time environments, and a self-learning scheme determines whether enough data has been collected to further improve the accuracy of such measurements. The simulated experiments show that the proposed model noticeably improves the accuracy of position and distance measurements. Especially, the estimated biases of position coordinates and distance measures are very close to the biases of true error distributions, with the R-squared over 0.98. A similar approach can also be utilized to enhance accuracy of other sensors or measurements in connected vehicle or relevant systems, where multi-data sources are available.