Prediction of a Road User's Most Likely Future Positions via Simple Kernel Density Estimation
Paper in proceeding, 2022

A method is explored for determining from data a probability density function over future positions of a road user, given that the road user's current state is known. It is assumed that data consists of previously observed road users' state trajectories. The idea is to select from data those states that are most similar, in some sense, to a currently observed road user's state, and from the corresponding future states in the data, compute a probability density function using Kernel Density Estimation(KDE). The resulting method is simple and can quickly be implemented using off-the-shelf implementations of KDE. Qualitative results on real world traffic data show that the method correctly models road user behavior. A qualitative comparison is made with another method also using KDE but based on other assumptions than the those resulting from the aforementioned idea, showing that both methods yield similar results.

Author

Angelos Toytziaridis

Chalmers, Electrical Engineering, Systems and control

Paolo Falcone

Chalmers, Electrical Engineering, Systems and control

Jonas Sjöberg

Chalmers, Electrical Engineering, Systems and control

Proceedings of the International Conference on Vehicle Electronics and Safety, ICVES 2022


978-1-6654-7699-7 (ISBN)

2022 IEEE International Conference on Vehicular Electronics and Safety (ICVES)
Bogota, Colombia,

5G for Connected Autonomous Vehicles in Complex Urban Environments

VINNOVA (2018-05005), 2019-04-01 -- 2023-03-31.

Areas of Advance

Transport

Subject Categories

Infrastructure Engineering

Geophysics

Electrical Engineering, Electronic Engineering, Information Engineering

Probability Theory and Statistics

DOI

10.1109/ICVES56941.2022.9986825

More information

Latest update

10/26/2023