Urban Topology Foundation Models for Sample-Efficient Urban Traffic Imputation

Institute
Lehrstuhl für Fahrzeugtechnik (TUM-ED)
Type
Semester Thesis / Master's Thesis /
Content
experimental / theoretical /  
Description

Data-driven traffic state estimation pipelines typically rely on tabular models that operate in a topologically blind manner, requiring high sensor density to map spatial features to flow. This thesis develops the Urban Topology Foundation Model (UTFM), a graph-based representation learning framework designed to achieve extreme sample efficiency in traffic imputation. By pre-training a Graph Neural Network architecture on global urban geometries via Self-Supervised Learning (SSL), the model extracts universal latent structural embeddings of road networks. The primary objective is to evaluate the downstream predictive capacity of these embeddings combined with a differentiable prediction head, mapping the imputation performance frontier across sparse sensor coverage regimes.

Requirements
  • Programming Proficiency: Advanced proficiency in Python programming and geometric deep learning libraries, specifically PyTorch.
  • Machine Learning Foundations: Solid theoretical and practical understanding of Neural Networks, ideally experience with GNNs, Transformers, and Self-Supervised Learning (SSL) paradigms.
Possible start
sofort
Contact
Joshua Mutter, M.Sc.
joshua.muttertum.de
Announcement