ROLGMar 19, 2025

Robotic Paper Wrapping by Learning Force Control

arXiv:2503.15685v13 citationsh-index: 27IEEE Access
Originality Incremental advance
AI Analysis

This addresses the problem of precise robotic packaging for industries handling delicate materials, though it is incremental in applying existing learning methods to a specific domain.

The study tackled robotic paper wrapping by developing a framework combining imitation and reinforcement learning to optimize force control, achieving a significant reduction in tear and wrinkle rates across various materials.

Robotic packaging using wrapping paper poses significant challenges due to the material's complex deformation properties. The packaging process itself involves multiple steps, primarily categorized as folding the paper or creating creases. Small deviations in the robot's arm trajectory or force vector can lead to tearing or wrinkling of the paper, exacerbated by the variability in material properties. This study introduces a novel framework that combines imitation learning and reinforcement learning to enable a robot to perform each step of the packaging process efficiently. The framework allows the robot to follow approximate trajectories of the tool-center point (TCP) based on human demonstrations while optimizing force control parameters to prevent tearing or wrinkling, even with variable wrapping paper materials. The proposed method was validated through ablation studies, which demonstrated successful task completion with a significant reduction in tear and wrinkle rates. Furthermore, the force control strategy proved to be adaptable across different wrapping paper materials and robust against variations in the size of the target object.

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