An end-to-end RL policy trained via high-fidelity differentiable simulation maps depth images straight to bodyrate commands, achieving top success rates, low jerk, and zero-shot real-world generalization up to 7.5 m/s in dense environments.
EGO-planner: An ESDF-free gradient-based local planner for quadrotors
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Simple but Stable, Fast and Safe: Achieve End-to-end Control by High-Fidelity Differentiable Simulation
An end-to-end RL policy trained via high-fidelity differentiable simulation maps depth images straight to bodyrate commands, achieving top success rates, low jerk, and zero-shot real-world generalization up to 7.5 m/s in dense environments.