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AutoWorld: Scaling Multi-Agent Traffic Simulation with Self-Supervised World Models

Description

Multi-agent traffic simulation is central to developing and testing autonomous driving systems. Recent data-driven simulators have achieved promising results, but rely heavily on supervised learning from labeled trajectories or semantic annotations, making it costly to scale their performance. Meanwhile, large amounts of unlabeled sensor data can be collected at scale but remain largely unused by existing traffic simulation frameworks. This raises a key question: How can a method harness unlabel

Source

http://arxiv.org/abs/2603.28963v1