ROAILGMay 30, 2025

DexMachina: Functional Retargeting for Bimanual Dexterous Manipulation

arXiv:2505.24853v131 citationsh-index: 33
Originality Incremental advance
AI Analysis

This work addresses the challenge of functional retargeting for dexterous manipulation, which is incremental in improving policy learning for robotics applications.

The authors tackled the problem of learning dexterous manipulation policies for bimanual tasks with articulated objects from human demonstrations, and their algorithm DexMachina significantly outperformed baseline methods in simulation benchmarks.

We study the problem of functional retargeting: learning dexterous manipulation policies to track object states from human hand-object demonstrations. We focus on long-horizon, bimanual tasks with articulated objects, which is challenging due to large action space, spatiotemporal discontinuities, and embodiment gap between human and robot hands. We propose DexMachina, a novel curriculum-based algorithm: the key idea is to use virtual object controllers with decaying strength: an object is first driven automatically towards its target states, such that the policy can gradually learn to take over under motion and contact guidance. We release a simulation benchmark with a diverse set of tasks and dexterous hands, and show that DexMachina significantly outperforms baseline methods. Our algorithm and benchmark enable a functional comparison for hardware designs, and we present key findings informed by quantitative and qualitative results. With the recent surge in dexterous hand development, we hope this work will provide a useful platform for identifying desirable hardware capabilities and lower the barrier for contributing to future research. Videos and more at https://project-dexmachina.github.io/

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