Adversarial Localization Algorithms in Indirect Vehicle-to-Vehicle Communication
| Alekszejenkó, Levente | ||
| Dobrowiecki, Tadeusz P. | ||
| 2024-04-30T14:07:42Z | ||
| 2024-04-30T14:07:42Z | ||
| 2024 | ||
AbstractCommunicating autonomous vehicles (CAVs) can obtain direct measurements from their sensors or indirectly receive them via Vehicle-to-Vehicle (V2V) communication. As the CAVs are expected to share a part of their measurements, it can naturally pose a privacy threat by possibly revealing the route of the sender vehicle. Consequently, we shall assess the risks of sharing a dataset that is a mixture of direct and indirect measurements. However, a wide variety of papers focus on localization attacks for direct measurements; incorporating indirect measurements opens a new horizon for these researches. In this paper, we analyze a couple of localization algorithms for mixture datasets with applicable performance metrics. We have evaluated the algorithms in an Eclipse SUMO-based simulation. We consider these results as the baseline of future research. | ||
| http://hdl.handle.net/10890/55178 | ||
| en | ||
| Adversarial Localization Algorithms in Indirect Vehicle-to-Vehicle Communication | ||
| könyvfejezet | ||
| Open Access | ||
| Budapest University of Technology and Economics, Department of Measurement and Information Systems | ||
| 2024.02.05-2024.02.06. | ||
| Budapest, Hungary | ||
| 31th Minisymposium of the Department of Measurement and Information Systems | ||
| 2024 | ||
| 978-963-421-951-4 | ||
| Budapest University of Technology and Economics | ||
| Budapest, Hungary | ||
| Proceedings of the 31th Minisymposium | ||
| Department of Measurement and Information Systems | ||
| Kiadói változat | ||
| Faculty of Electrical Engineering and Informatics | ||
| 31 | ||
| 10.3311/MINISY2024-006 | ||
| 36 | ||
| indirect measurements | ||
| V2V communication | ||
| localization attack | ||
| localization performance | ||
| Konferenciacikk | ||
| Budapest University of Technology and Economics |
Files
Original bundle
- Name:
- MinisyDMIS_2024_paper_6.pdf
- Size:
- 15.14 MB
- Format:
- Adobe Portable Document Format
- Description:
- MinisyDMIS_2024_paper_6.pdf