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The paper introduces Modular Residual Reinforcement Learning (MoReL), a framework for dexterous hand retargeting that decomposes policy learning into finger-specific subpolicies and a residual coordination module. This modular approach balances local control with global motion coherence, enabling efficient training from minimal demonstrations without pretraining and achieving low-latency inference. Experiments demonstrate MoReL's superior performance and cross-platform adaptability in fine-grained dexterous manipulation tasks, validating the effectiveness of the architecture and reward design.
Achieve dexterous hand retargeting that's both fast and generalizable by decomposing reinforcement learning policies into finger-specific modules coordinated by a residual network.
Effective motion retargeting is essential for robotic hands to perform fine-grained teleoperated manipulation. However, existing methods face several key challenges: optimization-based approaches offer accurate reproduction but suffer from high computational latency; learning-based methods provide faster inference but require large-scale datasets; and achieving fine-grained retargeting often compromises hardware adaptability due to task- or hand-specific designs. To this end, we propose Modular Residual Reinforcement Learning (MoReL), a generalizable reinforcement learning framework for dexterous hand retargeting. MoReL decomposes policy learning into finger-specific subpolicies and a residual coordination module, effectively balancing detailed local control with coherent global motion. This architecture enables efficient training from minimal demonstrations without reliance on pretrained networks, while achieving low-latency inference and supporting flexible input modalities. A structured reward formulation further preserves human manipulation nuances and promotes generalization across diverse robotic hands and task scenarios. Extensive experiments validate the effectiveness of our architecture and reward design, demonstrating MoReL's superior performance and cross-platform adaptability in fine-grained dexterous manipulation tasks.