Automotive Perception System Evaluation with Reference Data from a UAV’s Camera Using ArUco Markers and DCNN

Autor: Krzysztof Błachut, Mateusz Wąsala, Tomasz Kryjak, Michał Daniłowicz, Mateusz Komorkiewicz, Hubert Szolc
Rok vydání: 2022
Předmět:
Zdroj: Journal of Signal Processing Systems. 94:675-692
ISSN: 1939-8115
1939-8018
Popis: Testing and evaluation of an automotive perception system is a complicated task which requires special equipment and infrastructure. To compute key performance indicators and compare the results with real-world situation, some additional sensors and manual data labelling are often required. In this article, we propose a different approach, which is based on a UAV equipped with a 4K camera flying above a test track. Two computer vision methods are used to precisely determine the positions of the objects around the car – one based on ArUco markers and the other on a DCNN (we provide the algorithms used on GitHub). The detections are then correlated with the perception system readings. For the static and dynamic experiments, the differences between various systems are mostly below 0.5 m. The results of the experiments performed indicate that this approach could be an interesting alternative to existing evaluation solutions.
Databáze: OpenAIRE