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Diff-Transfer: Model-based Robotic Manipulation Skill Transfer via Differentiable Physics Simulation

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arxiv 2310.04930 v2 pith:J4Z23TFX submitted 2023-10-07 cs.RO cs.AIcs.LG

Diff-Transfer: Model-based Robotic Manipulation Skill Transfer via Differentiable Physics Simulation

classification cs.RO cs.AIcs.LG
keywords diff-transfertasktextittransferdifferentiablenovelphysicsrobotic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The capability to transfer mastered skills to accomplish a range of similar yet novel tasks is crucial for intelligent robots. In this work, we introduce $\textit{Diff-Transfer}$, a novel framework leveraging differentiable physics simulation to efficiently transfer robotic skills. Specifically, $\textit{Diff-Transfer}$ discovers a feasible path within the task space that brings the source task to the target task. At each pair of adjacent points along this task path, which is two sub-tasks, $\textit{Diff-Transfer}$ adapts known actions from one sub-task to tackle the other sub-task successfully. The adaptation is guided by the gradient information from differentiable physics simulations. We propose a novel path-planning method to generate sub-tasks, leveraging $Q$-learning with a task-level state and reward. We implement our framework in simulation experiments and execute four challenging transfer tasks on robotic manipulation, demonstrating the efficacy of $\textit{Diff-Transfer}$ through comprehensive experiments. Supplementary and Videos are on the website https://sites.google.com/view/difftransfer

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