ROAIAug 1, 2025

HannesImitation: Grasping with the Hannes Prosthetic Hand via Imitation Learning

arXiv:2508.00491v11 citationsh-index: 12IROS
Originality Incremental advance
AI Analysis

This work addresses dexterity restoration for prosthetic hand users by enabling more autonomous operation in unconstrained settings, representing a novel application of imitation learning in this domain.

The paper tackles the problem of controlling a prosthetic hand for object grasping in unstructured environments using imitation learning, achieving successful grasps across diverse objects and outperforming a segmentation-based visual servo controller in such scenarios.

Recent advancements in control of prosthetic hands have focused on increasing autonomy through the use of cameras and other sensory inputs. These systems aim to reduce the cognitive load on the user by automatically controlling certain degrees of freedom. In robotics, imitation learning has emerged as a promising approach for learning grasping and complex manipulation tasks while simplifying data collection. Its application to the control of prosthetic hands remains, however, largely unexplored. Bridging this gap could enhance dexterity restoration and enable prosthetic devices to operate in more unconstrained scenarios, where tasks are learned from demonstrations rather than relying on manually annotated sequences. To this end, we present HannesImitationPolicy, an imitation learning-based method to control the Hannes prosthetic hand, enabling object grasping in unstructured environments. Moreover, we introduce the HannesImitationDataset comprising grasping demonstrations in table, shelf, and human-to-prosthesis handover scenarios. We leverage such data to train a single diffusion policy and deploy it on the prosthetic hand to predict the wrist orientation and hand closure for grasping. Experimental evaluation demonstrates successful grasps across diverse objects and conditions. Finally, we show that the policy outperforms a segmentation-based visual servo controller in unstructured scenarios. Additional material is provided on our project page: https://hsp-iit.github.io/HannesImitation

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