Towards Multi-Object Nonprehensile Transportation via Shared Teleoperation: A Framework Based on Virtual Object Model Predictive Control

arXiv cs.RO / 4/9/2026

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Key Points

  • The paper proposes a shared teleoperation framework for multi-object nonprehensile transportation that splits responsibilities between human positioning control and robot autonomous tray/orientation control under dynamic constraints.
  • It introduces a virtual object (VO)-based method to simplify and analyze dynamic constraints for trajectory planning, addressing limitations of prior model-dependent approaches.
  • An MPC-based trajectory smoothing algorithm is presented to coordinate user tracking with orientation control while enforcing real-time constraints during manipulation.
  • Experiments validate stable transportation of nine objects at accelerations up to 2.4 m/s² and show major improvements over a baseline, including a 72.45% reduction in sliding distance and elimination of tip-overs (0% vs. 13.9%).

Abstract

Multi-object nonprehensile transportation in teleoperation demands simultaneous trajectory tracking and tray orientation control. Existing methods often struggle with model dependency, uncertain parameters, and multi-object adaptability. We propose a shared teleoperation framework where humans and robots share positioning control, while the robot autonomously manages orientation to satisfy dynamic constraints. Key contributions include: 1) A theoretical dynamic constraint analysis utilizing a novel virtual object (VO)-based method to simplify constraints for trajectory planning. 2) An MPC-based trajectory smoothing algorithm that enforces real-time constraints and coordinates user tracking with orientation control. 3) Validations demonstrating stable manipulation of nine objects at accelerations up to 2.4 m/s2. Compared to the baseline, our approach reduces sliding distance by 72.45% and eliminates tip-overs (0% vs. 13.9%), proving robust adaptability in complex scenarios.