I. Introduction
The awareness that recording and labeling vast amounts of data are necessary to employ machine learning is pervasive. It raises the question of how to replace manual labeling of categorical data features for machine learning or reduce the required training data sizes. Therefore, methods for synthetic training data are gaining popularity and attention across mul-tiple application areas. Specifically, the field of autonomous driving requires object detection and hence desires labeled data sets. Student competitions like the formula student competition raise students' interest in the field of driverless and constitute ideal development grounds for future driverless systems.