ArXiv TLDR

HRDexDB: A Large-Scale Dataset of Dexterous Human and Robotic Hand Grasps

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2604.14944

Jongbin Lim, Taeyun Ha, Mingi Choi, Jisoo Kim, Byungjun Kim + 2 more

cs.ROcs.CV

TLDR

HRDexDB is a large multi-modal dataset of human and robotic hand grasps with rich 3D, tactile, and video data.

Key contributions

  • Contains 1.4K grasping trials with human and multiple robot hands on 100 objects
  • Provides high-precision 3D motion, tactile signals, and synchronized multi-view videos
  • Includes both successful and failed grasps for robust manipulation learning
  • Enables cross-domain study by aligning human and robotic grasping on same objects

Why it matters

HRDexDB offers a unique, comprehensive dataset bridging human and robotic dexterity with rich sensory data. It advances research in multi-modal learning and robotic manipulation by enabling direct comparisons and policy transfer.

Original Abstract

We present HRDexDB, a large-scale, multi-modal dataset of high-fidelity dexterous grasping sequences featuring both human and diverse robotic hands. Unlike existing datasets, HRDexDB provides a comprehensive collection of grasping trajectories across human hands and multiple robot hand embodiments, spanning 100 diverse objects. Leveraging state-of-the-art vision methods and a new dedicated multi-camera system, our HRDexDB offers high-precision spatiotemporal 3D ground-truth motion for both the agent and the manipulated object. To facilitate the study of physical interaction, HRDexDB includes high-resolution tactile signals, synchronized multi-view video, and egocentric video streams. The dataset comprises 1.4K grasping trials, encompassing both successes and failures, each enriched with visual, kinematic, and tactile modalities. By providing closely aligned captures of human dexterity and robotic execution on the same target objects under comparable grasping motions, HRDexDB serves as a foundational benchmark for multi-modal policy learning and cross-domain dexterous manipulation.

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