A Transformer anomaly detector trained on Nets-within-Nets-generated trajectories from LTL specifications reaches 91.3% accuracy on execution inefficiencies and 88.3% on core mission violations in multi-robot settings.
Multimodal anomaly detection for assistive robots,
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High-Level Multi-Robot Trajectory Planning And Spurious Behavior Detection
A Transformer anomaly detector trained on Nets-within-Nets-generated trajectories from LTL specifications reaches 91.3% accuracy on execution inefficiencies and 88.3% on core mission violations in multi-robot settings.