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Learning Efficient Robotic Garment Manipulation with Standardization

Robotics 2025-07-01 v1

Abstract

Garment manipulation is a significant challenge for robots due to the complex dynamics and potential self-occlusion of garments. Most existing methods of efficient garment unfolding overlook the crucial role of standardization of flattened garments, which could significantly simplify downstream tasks like folding, ironing, and packing. This paper presents APS-Net, a novel approach to garment manipulation that combines unfolding and standardization in a unified framework. APS-Net employs a dual-arm, multi-primitive policy with dynamic fling to quickly unfold crumpled garments and pick-and-place (p and p) for precise alignment. The purpose of garment standardization during unfolding involves not only maximizing surface coverage but also aligning the garment's shape and orientation to predefined requirements. To guide effective robot learning, we introduce a novel factorized reward function for standardization, which incorporates garment coverage (Cov), keypoint distance (KD), and intersection-over-union (IoU) metrics. Additionally, we introduce a spatial action mask and an Action Optimized Module to improve unfolding efficiency by selecting actions and operation points effectively. In simulation, APS-Net outperforms state-of-the-art methods for long sleeves, achieving 3.9 percent better coverage, 5.2 percent higher IoU, and a 0.14 decrease in KD (7.09 percent relative reduction). Real-world folding tasks further demonstrate that standardization simplifies the folding process. Project page: see https://hellohaia.github.io/APS/

Keywords

Cite

@article{arxiv.2506.22769,
  title  = {Learning Efficient Robotic Garment Manipulation with Standardization},
  author = {Changshi Zhou and Feng Luan and Jiarui Hu and Shaoqiang Meng and Zhipeng Wang and Yanchao Dong and Yanmin Zhou and Bin He},
  journal= {arXiv preprint arXiv:2506.22769},
  year   = {2025}
}
R2 v1 2026-07-01T03:37:36.881Z