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EgoDyn-Bench: Evaluating Ego-Motion Understanding in Vision-Centric Foundation Models for Autonomous Driving
Paper β’ 2604.22851 β’ Published β’ 1 -
Target-Bench: Can World Models Achieve Mapless Path Planning with Semantic Targets?
Paper β’ 2511.17792 β’ Published β’ 6 -
Foundation Models in Autonomous Driving: A Survey on Scenario Generation and Scenario Analysis
Paper β’ 2506.11526 β’ Published -
SAVANT: Semantic Analysis with Vision-Augmented Anomaly deTection
Paper β’ 2510.18034 β’ Published β’ 4
AI & ML interests
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Autonomous Vehicle Systems Lab @ TUM
Technical University of Munich Β· School of Engineering and Design Prof. Dr.-Ing. Johannes Betz
We build the software and learning stack for autonomous vehicles β from motion planning and control on real platforms (EDGAR, autonomous racing) to foundation models that reason about driving scenes and vehicle dynamics.
π Lab website Β· π» github.com/TUM-AVS Β· π LinkedIn
*Open to collaboration and thesis projects β see the lab site. *
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EgoDyn-Bench: Evaluating Ego-Motion Understanding in Vision-Centric Foundation Models for Autonomous Driving
Paper β’ 2604.22851 β’ Published β’ 1 -
Target-Bench: Can World Models Achieve Mapless Path Planning with Semantic Targets?
Paper β’ 2511.17792 β’ Published β’ 6 -
Foundation Models in Autonomous Driving: A Survey on Scenario Generation and Scenario Analysis
Paper β’ 2506.11526 β’ Published -
SAVANT: Semantic Analysis with Vision-Augmented Anomaly deTection
Paper β’ 2510.18034 β’ Published β’ 4