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February

Adam Tonderski - PhD thesis defense

Illustration from Adam Tonderskis PhD Thesis. The figure shows a closed-loop simulation diagram of NeuroNCAP. A scenario definition reconfigures a real-world driving log to safety-critical collision scenario. The neural renderer then generates realistic sensor data, which the AD model consumes to plan a driving trajectory. A simple controller and vehicle model propagate the ego pose forward in time, and this cycle repeats until the scenario is passed or a collision occurs.
Illustration from Adam Tonderskis PhD Thesis. The figure shows a closed-loop simulation diagram of NeuroNCAP. A scenario definition reconfigures a real-world driving log to safety-critical collision scenario. The neural renderer then generates realistic s
Tid: 2025-02-28 13:15 till 17:00 Disputation

Adam Tonderski will defend his PhD thesis "Towards Zero Bottlenecks for Scaling Autonomous Driving"

Abstract: 

In this dissertation I examine the main scaling challenges in autonomous driving development, discussing recent advances in the field while contributing specific solutions to key bottlenecks. The first challenge is the reliance on human labor, particularly for annotations. Here we make two key contributions: new techniques to extract additional value from existing annotations through future prediction (i), and an adaptation of vision-language learning to 3D automotive sensors that reduces dependence on explicit labels while maintaining interpretability (ii). The second challenge concerns access to training data covering the full spectrum of driving scenarios. We address this data bottleneck through complementary approaches: releasing a diverse European driving dataset collected across multiple years and conditions (iii), and developing a neural rendering method that enables scalable generation of realistic synthetic data (iv). Finally, to enable scalable safety testing, we introduce a closed-loop neural simulator that transforms ordinary driving scenarios into challenging near-collision cases (v). Together with broader advances in the field, our contributions suggest a promising path toward scaling autonomous vehicle development.
 

Thesis advisors:

Prof. Kalle Åström, Assoc. Prof. Christoffer Petersson

Faculty opponent:

Felix Heide, Ass. Prof. at Princeton and Head of AI at Torc Robotics



Om händelsen
Tid: 2025-02-28 13:15 till 17:00

Plats
MH:Hörmander

Kontakt
karl [dot] astrom [at] math [dot] lth [dot] se

Sidansvarig: webbansvarig@math.lu.se | 2016-06-20