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Grasping by interconnection : can robust and adaptive grasping emerge from minimal object information?

Julien Vanderheyden, Guillaume Drion, Pierre Sacré, Fulvio Forni
September 27, 2026
Published Date

Research Abstract & Technology Focus

This paper investigates whether robust and adaptive dexterous grasping can emerge from minimal object information by modeling grasping as a dynamic interconnection between the robot and a simplified object representation. Instead of relying on precise object models or large-scale data-driven training, objects are approximated using coarse geometric primitives (sphere, cylinder, and box), each associated with a canonical grasp type from human grasp taxonomies. Grasp execution is formulated within the Virtual Model Control (VMC) framework, where virtual springs and dampers mechanically couple a virtual hand to a virtual object, allowing grasp motions to emerge naturally from the coupled dynamics rather than from predefined trajectories. Structured stiffness distributions and adaptive damping profiles promote coordinated, human-like finger closure while mitigating object ejection during transient phases. The approach is implemented on a Shadow Dexterous Hand and evaluated through robustness and generalization experiments under geometric and pose uncertainties, as well as on a diverse set of everyday objects. Results support the hypothesis that reliable dexterous grasping can arise from minimal yet structured object representations combined with dynamic object–robot interconnection.
GRASP Object (grammar) Computer science Artificial intelligence Robot Computer vision

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