2022
DOI: 10.1109/lra.2022.3189156
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Randomized-to-Canonical Model Predictive Control for Real-World Visual Robotic Manipulation

Abstract: Many works have recently explored Sim-to-real transferable visual model predictive control (MPC). However, such works are limited to one-shot transfer, where real-world data must be collected once to perform the sim-to-real transfer, which remains a significant human effort in transferring the models learned in simulations to new domains in the real world.To alleviate this problem, we first propose a novel modellearning framework called Kalman Randomized-to-Canonical Model (KRC-model). This framework is capabl… Show more

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Cited by 2 publications
(1 citation statement)
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“…The Kalman Randomized-to-Canonical Model, a zero-shot sim-to-real transferable visual model predictive control (MPC) technique, is presented by Yamanokuchi et al [ 129 ]. The suggested system utilizes the KRC model to extract intrinsic characteristics and dynamics that are task-relevant from randomized pictures.…”
Section: Deep Rl For Robotic Manipulationmentioning
confidence: 99%
“…The Kalman Randomized-to-Canonical Model, a zero-shot sim-to-real transferable visual model predictive control (MPC) technique, is presented by Yamanokuchi et al [ 129 ]. The suggested system utilizes the KRC model to extract intrinsic characteristics and dynamics that are task-relevant from randomized pictures.…”
Section: Deep Rl For Robotic Manipulationmentioning
confidence: 99%