Modality-Driven Design for Multi-Step Dexterous Manipulation: Insights from Neuroscience
Multi-step dexterous manipulation is a fundamental skill in household scenarios, yet remains an underexplored area in robotics. This paper proposes a modular approach, where each step of the manipulation process is addressed with dedicated policies based on effective modality input, rather than rely...
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Zusammenfassung: | Multi-step dexterous manipulation is a fundamental skill in household
scenarios, yet remains an underexplored area in robotics. This paper proposes a
modular approach, where each step of the manipulation process is addressed with
dedicated policies based on effective modality input, rather than relying on a
single end-to-end model. To demonstrate this, a dexterous robotic hand performs
a manipulation task involving picking up and rotating a box. Guided by insights
from neuroscience, the task is decomposed into three sub-skills, 1)reaching,
2)grasping and lifting, and 3)in-hand rotation, based on the dominant sensory
modalities employed in the human brain. Each sub-skill is addressed using
distinct methods from a practical perspective: a classical controller, a
Vision-Language-Action model, and a reinforcement learning policy with force
feedback, respectively. We tested the pipeline on a real robot to demonstrate
the feasibility of our approach. The key contribution of this study lies in
presenting a neuroscience-inspired, modality-driven methodology for multi-step
dexterous manipulation. |
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DOI: | 10.48550/arxiv.2412.11337 |