Lane-Level Map Matching based on HMM
Journal article, 2021
map matching. Apart from GPS values, the model is further assisted by yaw rate data (converted to a lane change indicator signal) and visual cues in the form of the left and right lane marking types (dashed, solid, etc.). Having defined expressions for the HMM emission and transition probabilities, we evaluate our model to demonstrate that it achieves 95.1% recall and 3.3% median path length error for motorway trajectories.
map matching
Viterbi algorithm
road networks
lane-level map matching
hidden Markov model
Author
Anders Hansson
Zenuity AB
Ellen Korsberg
Student at Chalmers
Roza Maghsood
Zenuity AB
Eliza Nordén
Student at Chalmers
Selpi Selpi
Chalmers, Mechanics and Maritime Sciences (M2), Vehicle Safety
IEEE Transactions on Intelligent Vehicles
23798858 (eISSN)
Vol. 6 3 430-439Subject Categories
Other Computer and Information Science
Other Engineering and Technologies
Probability Theory and Statistics
Computer Science
Areas of Advance
Information and Communication Technology
Transport
Driving Forces
Sustainable development
DOI
10.1109/TIV.2020.3035329