Dense Hand-Object(HO) GraspNet with Full Grasping Taxonomy and Dynamics
Woojin Cho, Jihyun Lee, Minjae Yi, Minje Kim, Taeyun Woo, Donghwan, Kim, Taewook Ha, Hyokeun Lee, Je-Hwan Ryu, Woontack Woo, Tae-Kyun Kim

TL;DR
HOGraspNet is a comprehensive real dataset capturing full hand-object grasp taxonomies, diverse interactions, and annotations, enabling advanced research in 3D hand-object interaction understanding.
Contribution
We introduce HOGraspNet, the first dataset with full grasp taxonomies, wide variations, and accurate 3D annotations for hand-object interaction research.
Findings
Performance varies with grasp type and object class.
The dataset captures diverse hand shapes from 99 participants.
Accurate 3D meshes are obtained without parameter tuning.
Abstract
Existing datasets for 3D hand-object interaction are limited either in the data cardinality, data variations in interaction scenarios, or the quality of annotations. In this work, we present a comprehensive new training dataset for hand-object interaction called HOGraspNet. It is the only real dataset that captures full grasp taxonomies, providing grasp annotation and wide intraclass variations. Using grasp taxonomies as atomic actions, their space and time combinatorial can represent complex hand activities around objects. We select 22 rigid objects from the YCB dataset and 8 other compound objects using shape and size taxonomies, ensuring coverage of all hand grasp configurations. The dataset includes diverse hand shapes from 99 participants aged 10 to 74, continuous video frames, and a 1.5M RGB-Depth of sparse frames with annotations. It offers labels for 3D hand and object meshes,…
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Taxonomy
TopicsRobot Manipulation and Learning · Hand Gesture Recognition Systems · Human Pose and Action Recognition
