OT-MPC computes an optimal coupling between candidate control sequences and low-cost proposals via entropy-regularized optimal transport and the Sinkhorn algorithm to improve sampling-based MPC performance.
Reference-Free Sampling-Based Model Predictive Control
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abstract
We present a sampling-based model predictive control (MPC) framework that enables emergent locomotion without relying on handcrafted gait patterns or predefined contact sequences. Our method discovers diverse motion patterns, ranging from trotting to galloping, robust standing policies, jumping, and handstand balancing, purely through the optimization of high-level objectives. Building on model predictive path integral (MPPI), we propose a cubic Hermite spline parameterization that operates on position and velocity control points. Our approach enables contact-making and contact-breaking strategies that adapt automatically to task requirements, requiring only a limited number of sampled trajectories. This sample efficiency enables real-time control on standard CPU hardware, eliminating the GPU acceleration typically required by other state-of-the-art MPPI methods. We validate our approach on the Go2 quadrupedal robot, demonstrating a range of emergent gaits and basic jumping capabilities. In simulation, we further showcase more complex behaviors, such as backflips, dynamic handstand balancing and locomotion on a Humanoid, all without requiring reference tracking or offline pre-training.
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cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Sampling-Based Control via Entropy-Regularized Optimal Transport
OT-MPC computes an optimal coupling between candidate control sequences and low-cost proposals via entropy-regularized optimal transport and the Sinkhorn algorithm to improve sampling-based MPC performance.