Staffordshire University logo
STORE - Staffordshire Online Repository

Evaluation of Performance Enhancement for Crash Constellation Prediction via Car-to-Car Communication

Kuehbeck, Thomas, Hakobyan, Gor, Sikora, Axel, Chibelushi, Claude C. and Moniri, Mansour (2014) Evaluation of Performance Enhancement for Crash Constellation Prediction via Car-to-Car Communication. Lecture Notes in Computer Science, 8435 . Springer International Publishing, pp. 57-68. ISBN 978-3-319-06643-1

[img] Text
Eval of Perf Enh for Crash Const Pred via C2Cr Communication.pdf
Restricted to Registered users only
Available under License All Rights Reserved.

Download (213kB) | Request a copy

Abstract or description

Active safety systems for advanced driver assistance systems act within a complex, dynamic traffic environment featuring various sensor systems which detect the vehicles’ surroundings and interior. This paper describes the recent progress towards a performance evaluation of car-to-car communication (C2C) for active safety systems - in particular for crash constellation prediction. The methodology introduced in this work is designed to evaluate the impact of different sensors on the accuracy of a crash constellation prediction algorithm. The benefit of C2C communication (viewed as a virtual sensor) within a sensor data fusion architecture for pre-crash collision prediction is explored. Therefore, a simulation environment for accident scenarios analysis reproducing real-world sensor behaviour, is designed and implemented. Performance evaluation results show that C2C increases confidence in the estimated position of the oncoming vehicle. With C2C enhancement the given accuracy in time-to-collision (TTC) estimation is achievable about 110 ms earlier for moderate velocities at TTC range of [0.5s..0.2s]. The uncertainty in the vehicle position prediction at the time of collision can be reduced about half by integrating C2C communication into the sensor data fusion.

Item Type: Book / Proceeding
Faculty: Previous Faculty of Computing, Engineering and Sciences > Computing
Depositing User: Claude CHIBELUSHI
Date Deposited: 23 Sep 2016 08:51
Last Modified: 24 Feb 2023 13:43
URI: https://eprints.staffs.ac.uk/id/eprint/2448

Actions (login required)

View Item View Item

DisabledGo Staffordshire University is a recognised   Investor in People. Sustain Staffs
Legal | Freedom of Information | Site Map | Job Vacancies
Staffordshire University, College Road, Stoke-on-Trent, Staffordshire ST4 2DE t: +44 (0)1782 294000