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Main Authors: Wang, Shiyao, Liu, Xiuping, Wang, Charlie C. L., Liu, Jian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.08944
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author Wang, Shiyao
Liu, Xiuping
Wang, Charlie C. L.
Liu, Jian
author_facet Wang, Shiyao
Liu, Xiuping
Wang, Charlie C. L.
Liu, Jian
contents Learning the skill of human bimanual grasping can extend the capabilities of robotic systems when grasping large or heavy objects. However, it requires a much larger search space for grasp points than single-hand grasping and numerous bimanual grasping annotations for network learning, making both data-driven or analytical grasping methods inefficient and insufficient. We propose a framework for bimanual grasp saliency learning that aims to predict the contact points for bimanual grasping based on existing human single-handed grasping data. We learn saliency corresponding vectors through minimal bimanual contact annotations that establishes correspondences between grasp positions of both hands, capable of eliminating the need for training a large-scale bimanual grasp dataset. The existing single-handed grasp saliency value serves as the initial value for bimanual grasp saliency, and we learn a saliency adjusted score that adds the initial value to obtain the final bimanual grasp saliency value, capable of predicting preferred bimanual grasp positions from single-handed grasp saliency. We also introduce a physics-balance loss function and a physics-aware refinement module that enables physical grasp balance, capable of enhancing the generalization of unknown objects. Comprehensive experiments in simulation and comparisons on dexterous grippers have demonstrated that our method can achieve balanced bimanual grasping effectively.
format Preprint
id arxiv_https___arxiv_org_abs_2404_08944
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Physics-Aware Iterative Learning and Prediction of Saliency Map for Bimanual Grasp Planning
Wang, Shiyao
Liu, Xiuping
Wang, Charlie C. L.
Liu, Jian
Robotics
Learning the skill of human bimanual grasping can extend the capabilities of robotic systems when grasping large or heavy objects. However, it requires a much larger search space for grasp points than single-hand grasping and numerous bimanual grasping annotations for network learning, making both data-driven or analytical grasping methods inefficient and insufficient. We propose a framework for bimanual grasp saliency learning that aims to predict the contact points for bimanual grasping based on existing human single-handed grasping data. We learn saliency corresponding vectors through minimal bimanual contact annotations that establishes correspondences between grasp positions of both hands, capable of eliminating the need for training a large-scale bimanual grasp dataset. The existing single-handed grasp saliency value serves as the initial value for bimanual grasp saliency, and we learn a saliency adjusted score that adds the initial value to obtain the final bimanual grasp saliency value, capable of predicting preferred bimanual grasp positions from single-handed grasp saliency. We also introduce a physics-balance loss function and a physics-aware refinement module that enables physical grasp balance, capable of enhancing the generalization of unknown objects. Comprehensive experiments in simulation and comparisons on dexterous grippers have demonstrated that our method can achieve balanced bimanual grasping effectively.
title Physics-Aware Iterative Learning and Prediction of Saliency Map for Bimanual Grasp Planning
topic Robotics
url https://arxiv.org/abs/2404.08944