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Automated Action Generation based on Action Field for Robotic Garment Manipulation

6 May 2025
Hu Cheng
Fuyuki Tokuda
Kazuhiro Kosuge
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Abstract

Garment manipulation using robotic systems is a challenging task due to the diverse shapes and deformable nature of fabric. In this paper, we propose a novel method for robotic garment manipulation that significantly improves the accuracy while reducing computational time compared to previous approaches. Our method features an action generator that directly interprets scene images and generates pixel-wise end-effector action vectors using a neural network. The network also predicts a manipulation score map that ranks potential actions, allowing the system to select the most effective action. Extensive simulation experiments demonstrate that our method achieves higher unfolding and alignment performances and faster computation time than previous approaches. Real-world experiments show that the proposed method generalizes well to different garment types and successfully flattens garments.

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@article{cheng2025_2505.03537,
  title={ Automated Action Generation based on Action Field for Robotic Garment Manipulation },
  author={ Hu Cheng and Fuyuki Tokuda and Kazuhiro Kosuge },
  journal={arXiv preprint arXiv:2505.03537},
  year={ 2025 }
}
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