@inproceedings{29d8a1a0ff40442b9db87f5a87bad88a,
title = "Extraction and Processing of Geographic Data for the Automatic Generation of 3D Traffic Environments",
abstract = "The process of generating annotated data for deep neural networks is labor-intensive and time-consuming. To address this challenge, a potential solution lies in training the neural network within a simulated environment. Since creating large and detailed environments by hand is not straightforward and sometimes even unfeasible, the generation process is often automated. In this work, we propose a pipeline that enables the automatic generation of three-dimensional computer-generated worlds based on geographic data. To narrow down the scope of this vast domain, we concentrate the research on the development of traffic scenes. Therefore, the proposed pipeline combines data from the open-source platform OpenStreetMap and satellite imagery in the visual portion of the electromagnetic spectrum. Ultimately, a virtual traffic scene is successfully generated with a vast potential for various applications.",
keywords = "OpenStreetMap, Unreal Engine 5, automatic, computer vision, digital twin, geographic data, object detection, pipeline, satellite imagery, semantic segmentation, simulated environment, three-dimensional environment, traffic scene, virtual environment",
author = "{de Schampheleire}, Ben and Beno{\^i}t Pairet and Rob Haelterman",
note = "Publisher Copyright: {\textcopyright} 2023 ESM. All Rights Reserved.; 37th Annual European Simulation and Modelling Conference, ESM 2023 ; Conference date: 24-10-2023 Through 26-10-2023",
year = "2023",
language = "English",
series = "Modelling and Simulation 2023 - European Simulation and Modelling Conference 2023, ESM 2023",
publisher = "EUROSIS",
pages = "407--412",
editor = "Rob Vingerhoeds and {de Saqui-Sannes}, Pierre",
booktitle = "Modelling and Simulation 2023 - European Simulation and Modelling Conference 2023, ESM 2023",
}