Digital twins and virtual replicas of urban environments have a broad range of applications across various industries, including crisis management, evacuation planning, and emergency response training. Their ability to integrate physical environments with digital representations enables organizations to simulate, monitor, andoptimize real-world assets and operations. However, creating detailed and functional digital replicas of outdoor environments, preferable in LoD2 which includes detailed roof shapes, often requires extensive manual effort, particularly when open data sources lack essential metadata including structural dimensions or semantic features of buildings. To address this challenge, leveraging Digital Surface Models (DSM) in combination with building footprints offers a promising solution to recreate a highly detailed representation of the urban environment. These data sources are often commissioned by the respective city authorities and publicly available. However, classical rule-based approaches such as plane fitting followed by roof primitive matching are prone to errors and unreliable when data is noisy. Your responsibilities: Therefore, the objective of this work is to investigate which methods can be employed to automatically infer the roof type of buildings from a DSM to support the scalable creation of high-fidelity digital twins for safety-critical applications: - Evaluating current advances in inferring the roof type based on ordered/unordered point clouds and triangulated meshes (both can be derived from the DSM) - Developing a pipeline to infer the roof type based on DSM and building footprints - Comparing proposed pipeline with a classical rule-based approach - Assessing the practical effectiveness of the proposed pipeline in representative use cases Required Qualifications: - Currently enrolled as a student in computer science, mathematics, or similar major - Basic knowledge of common 3D representation formats in computer graphics, such as meshes, point clouds, and voxels - Basic knowledge in Deep Learning and Computer Vision - Basic Python skills (ideally with respect to deep learning applications, e.g., PyTorch or Tensorflow) We look forward to getting to know you! If you have any questions about this position (Vacancy-ID 4677) please contact: Tobias Koch Tel.: 49 2241 20148 55