ArXiv TLDR

FastGrasp: Learning-based Whole-body Control method for Fast Dexterous Grasping with Mobile Manipulators

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2604.12879

Heng Tao, Yiming Zhong, Zemin Yang, Yuexin Ma

cs.ROcs.AI

TLDR

FastGrasp is a learning-based whole-body control method enabling fast, dexterous grasping for mobile manipulators using a two-stage RL strategy and tactile feedback.

Key contributions

  • Introduces FastGrasp, a learning-based framework for fast mobile grasping.
  • Uses a two-stage RL strategy: CVAE for grasp candidates and whole-body movement.
  • Integrates tactile feedback for real-time grasp adjustments and impact handling.
  • Achieves robust grasping across diverse objects with effective sim-to-real transfer.

Why it matters

Existing mobile grasping methods struggle with impact, coordination, and generalization. FastGrasp solves these by integrating learning-based grasp guidance, whole-body control, and tactile feedback. This enables robust, fast dexterous grasping, significantly improving robot efficiency in various applications.

Original Abstract

Fast grasping is critical for mobile robots in logistics, manufacturing, and service applications. Existing methods face fundamental challenges in impact stabilization under high-speed motion, real-time whole-body coordination, and generalization across diverse objects and scenarios, limited by fixed bases, simple grippers, or slow tactile response capabilities. We propose \textbf{FastGrasp}, a learning-based framework that integrates grasp guidance, whole-body control, and tactile feedback for mobile fast grasping. Our two-stage reinforcement learning strategy first generates diverse grasp candidates via conditional variational autoencoder conditioned on object point clouds, then executes coordinated movements of mobile base, arm, and hand guided by optimal grasp selection. Tactile sensing enables real-time grasp adjustments to handle impact effects and object variations. Extensive experiments demonstrate superior grasping performance in both simulation and real-world scenarios, achieving robust manipulation across diverse object geometries through effective sim-to-real transfer.

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