Lidé
Ing. Tomáš Tichý
Všechny publikace
End-to-end Differentiable Model of Robot-terrain Interactions
- Autoři: Agishev, R., Ing. Tomáš Tichý, Kubelka, V., Mgr. Martin Pecka, Ph.D., Vacek, P., prof. Ing. Tomáš Svoboda, Ph.D., doc. Ing. Karel Zimmermann, Ph.D.,
- Publikace: ICML2024 Workshop: Differentiable Almost Everything: Differentiable Relaxations, Algorithms, Operators, and Simulators. Vienna: IEEE Industrial Electronic Society, 2024.
- Rok: 2024
- Pracoviště: Katedra kybernetiky, Vidění pro roboty a autonomní systémy
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Anotace:
We propose a differentiable model of robot-terrain interactions that delivers the expected robot trajectory given an onboard camera image and the robot control. The model is trained on a real dataset that covers various terrains ranging from vegetation to man-made obstacles. Since robot-endangering interactions are naturally absent in real-world training data, the consequent learning of the model suffers from training/testing distribution mismatch, and the quality of the result strongly depends on generalization of the model. Consequently, we propose a grey-box, explainable, physics-aware, and end-to-end differentiable model that achieves better generalization through strong geometrical and physical priors. Our model, which functions as an image-conditioned differentiable simulation, can generate millions of trajectories per second and provides interpretable intermediate outputs that enable efficient self-supervision. Our experimental evaluation demonstrates that the model outperforms state-of-the-art methods.