Air-flow sensing for perception in autonomous driving
Organisatsiooni nimi
Autonomous Driving Lab
Kokkuvõte
Context: The usual sensing modalities that are available to autonomous vehicles i.e. vision, radar and lidar have their limitations. For example, none of them is very suitable for estimating the length of a leading vehicle. Additional sensing modalities, such as wind flow sensing, might have the potential to meaningfully complement the usual sensing modalities in autonomous driving.
Description: You will build upon the innovative work done on flow-sensing applications in autonomous driving by Roman Matvejev [1] and Matis Ottan [2]. It is possible to investigate one of the following avenues: (i) working in simulations and proposing new applications of flow sensing in autonomous driving, (ii) investigating new feature extraction and classification/regression methods etc., (iii) expanding out of simulations with physical validation of flow sensing in autonomous driving.
The topic has a high level of novelty. Both the previous bachelor thesis works [1] and [2] resulted in conference publications [3] and [4].
References:
[1] Roman Matvejev, “Air-flow sensing for applications in autonomous driving”, Bachelor thesis, University of Tartu, 2021. Available at: https://comserv.cs.ut.ee/ati_thesis/datasheet.php?id=71873&year=2021
[2] Matis Ottan, “Leading Vehicle Length Estimation Using Pressure Data for Use in Autonomous Driving”, Bachelor thesis, University of Tartu, 2022. Available at: https://comserv.cs.ut.ee/ati_thesis/datasheet.php?id=74510&year=2022
[3] Roman Matvejev, Yar Muhammad, Naveed Muhammad, "Air-flow sensing for vehicle length estimation in autonomous driving applications", International Conference on Emerging Technologies and Factory Automation (ETFA), Sweden, 2021.
[4] Matis Ottan, Naveed Muhammad, "Leading Vehicle Length Estimation Using Pressure Data for Use in Autonomous Driving", International Conference on Emerging Technologies and Factory Automation (ETFA), Germany, 2022.
Description: You will build upon the innovative work done on flow-sensing applications in autonomous driving by Roman Matvejev [1] and Matis Ottan [2]. It is possible to investigate one of the following avenues: (i) working in simulations and proposing new applications of flow sensing in autonomous driving, (ii) investigating new feature extraction and classification/regression methods etc., (iii) expanding out of simulations with physical validation of flow sensing in autonomous driving.
The topic has a high level of novelty. Both the previous bachelor thesis works [1] and [2] resulted in conference publications [3] and [4].
References:
[1] Roman Matvejev, “Air-flow sensing for applications in autonomous driving”, Bachelor thesis, University of Tartu, 2021. Available at: https://comserv.cs.ut.ee/ati_thesis/datasheet.php?id=71873&year=2021
[2] Matis Ottan, “Leading Vehicle Length Estimation Using Pressure Data for Use in Autonomous Driving”, Bachelor thesis, University of Tartu, 2022. Available at: https://comserv.cs.ut.ee/ati_thesis/datasheet.php?id=74510&year=2022
[3] Roman Matvejev, Yar Muhammad, Naveed Muhammad, "Air-flow sensing for vehicle length estimation in autonomous driving applications", International Conference on Emerging Technologies and Factory Automation (ETFA), Sweden, 2021.
[4] Matis Ottan, Naveed Muhammad, "Leading Vehicle Length Estimation Using Pressure Data for Use in Autonomous Driving", International Conference on Emerging Technologies and Factory Automation (ETFA), Germany, 2022.
Lõputöö kaitsmise aasta
2024-2025
Juhendaja
Naveed Muhammad
Suhtlemiskeel(ed)
inglise keel
Nõuded kandideerijale
Tase
Bakalaureus, Magister
Märksõnad
Kandideerimise kontakt
Nimi
Naveed Muhammad
Tel
E-mail