DexTOG: Learning Task-Oriented Dexterous Grasp with Language

This study introduces a novel language-guided diffusion-based learning framework, DexTOG, aimed at advancing the field of task-oriented grasping (TOG) with dexterous hands. Unlike existing methods that mainly focus on 2-finger grippers, this research addresses the complexities of dexterous manipulation, where the system must identify non-unique optimal grasp poses under specific task constraints, cater to multiple valid grasps, and search in a high degree-of-freedom configuration space in grasp planning. The proposed DexTOG includes a diffusion-based grasp pose generation model, DexDiffu, and a data engine to support the DexDiffu. By leveraging DexTOG, we also proposed a new dataset, DexTOG-80K, which was developed using a shadow robot hand to perform various tasks on 80 objects from 5 categories, showcasing the dexterity and multi-tasking capabilities of the robotic hand. This research not only presents a significant leap in dexterous TOG but also provides a comprehensive dataset and simulation validation, setting a new benchmark in robotic manipulation research.
View on arXiv@article{zhang2025_2504.04573, title={ DexTOG: Learning Task-Oriented Dexterous Grasp with Language }, author={ Jieyi Zhang and Wenqiang Xu and Zhenjun Yu and Pengfei Xie and Tutian Tang and Cewu Lu }, journal={arXiv preprint arXiv:2504.04573}, year={ 2025 } }