Systematic Categorization of Influencing Factors on Radar-Based Perception to Facilitate Complex Real-World Data Evaluation
Maike Scholtes, Lutz Eckstein

TL;DR
This paper develops a structured categorization framework for environmental factors affecting radar sensors in automated driving, aiding in the analysis of perception uncertainties and sensor performance limitations in real-world data.
Contribution
It introduces a modular structuring concept to categorize influencing factors on radar sensors, simplifying complex data analysis for perception safety assessment.
Findings
Literature review on radar sensor influencing factors
Proposed a modular categorization framework
Facilitates analysis of perception limitations
Abstract
For the assessment of machine perception for automated driving it is important to understand the influence of certain environment factors on the sensors used. Especially when investigating large amounts of real-world data to find and understand perception uncertainties, a smart concept is needed to structure and categorize such complex data depending on the level of detail desired for the investigation. Information on performance limitation causes can support realistic sensor modeling, help determining scenarios containing shortcomings of sensors and above all is essential to reach perception safety. The paper at hand looks into influencing factors on radar sensors. It utilizes the fact that radar sensors have been used in vehicles for several decades already. Therefore, previous findings on influencing factors can be used as a starting point when assessing radar-based perception for…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Human-Automation Interaction and Safety · Target Tracking and Data Fusion in Sensor Networks
