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arXiv 提交日期: 2026-05-18
📄 Abstract - Dynamic robotic cloth folding with efficient Koopman operator-based model predictive control

Robotic cloth folding is a challenging task, particularly when considering dynamic folding tasks, which aim at folding cloth by fast motions that leverage its dynamics. When subject to such fast motions, the complexity of cloth dynamics hinders both system identification and planning of folding trajectories, resulting in a difficult simulation-to-reality transfer when using physical models of cloth. Compared to the dexterity that humans exhibit when performing folding tasks, robotic approaches usually employ small garments with quite rigid dynamics, and are either too slow, or fast but imprecise, requiring several attempts to achieve a reasonably good fold. In this paper, we tackle these challenges by generating fast folding trajectories with a novel model predictive controller, integrating physics-based simulation of cloth dynamics and efficient, kernel-based Koopman operator regression. Koopman operator regression, an increasingly popular machine learning technique for nonlinear system identification, is used to obtain a linear model for the cloth being folded. Such a surrogate model, trained with data from a high-fidelity, physics-based cloth simulator, can then be employed within a suitable model predictive control algorithm, in place of the costly, nonlinear one, to efficiently generate folding trajectories to be executed by a robotic manipulator. Both in simulated and real-robot experiments, we show how the linearization supplied by the Koopman operator-based model can be employed to efficiently generate fast folding trajectories to unseen poses, without sacrificing folding accuracy.

顶级标签: robotics machine learning
详细标签: cloth folding model predictive control koopman operator sim-to-real trajectory planning 或 搜索:

基于高效Koopman算子模型预测控制的机器人动态布料折叠 / Dynamic robotic cloth folding with efficient Koopman operator-based model predictive control


1️⃣ 一句话总结

本文提出了一种利用Koopman算子线性化布料动力学模型并结合模型预测控制的方法,使机器人能够通过快速动作精确地将布料折叠到新姿态,同时克服了传统物理模型计算慢、模拟与现实差距大的难题。

源自 arXiv: 2605.18373