Evaluation of Perception Sensor Model Performance in Simulation based on Experimental Findings

Nadine Bamminger, Hexuan Li, Li Wan, Zoltan Ferenc Magosi, Arno Eichberger

Research output: Contribution to conferencePosterpeer-review

Abstract

The market introduction of automated driving functions poses a significant challenge in terms of safety validation, primarily due to the complexity of real traffic test cases. While virtual testing has emerged as a viable solution, the accurate replication of physical perception sensors in virtual environments remains a formidable task. This study presents an evaluation method for virtual perception sensors, specifically focusing on their performance in automated driving and real-driving behaviour scenarios. Real driving data from a proving ground is collected and integrated into a multi-body simulation software, employing a specialized toolbox for seamless conversion of recorded measurements into simulation-ready data. Virtual sensor models for LIDAR, Radar, and Camera, utilizing various machine learning approaches, are implemented within the simulation alongside commercial sensor models. The output of these models is compared to real measurement data using statistical metrics, including the Chebyshev Distance, Pearson Correlation Coefficient, and Cross-Correlation Coefficient. The evaluation highlights the accuracy and performance of the machine learning-based models and the importance of employing multiple metrics that consider both correlation and offset between simulated and measured data.
Original languageEnglish
Publication statusPublished - 27 Dec 2023
EventInternational Conference - The Science and Development of Transport: ZIRP 2023 - Zagreb, Croatia
Duration: 7 Dec 20238 Dec 2023

Conference

ConferenceInternational Conference - The Science and Development of Transport
Country/TerritoryCroatia
CityZagreb
Period7/12/238/12/23

Keywords

  • Sensor model evaluation
  • Simulation
  • sensor modeling

ASJC Scopus subject areas

  • Automotive Engineering

Fields of Expertise

  • Mobility & Production

Cite this