Abstract
Comparing robotic cloth-manipulation systems in a real-world setup is challenging. The fidelity gap between simulation-trained cloth neural controllers and real-world operation hinders the reliable deployment of these methods in physical trials. Inconsistent experimental setups and hardware limitations among different approaches obstruct objective evaluations. This study demonstrates a reliable real-world comparison of different simulation-trained neural controllers
on both flattening and folding tasks with different types of fabrics varying in material, size, and colour. We introduce the DRAPER framework to enable this comprehensive study, which reliably reflects the true capabilities of these neural
controllers. It specifically addresses real-world grasping errors, such as misgrasping and multilayer grasping, through real-world adaptations of the simulation environment to provide data trajectories that closely reflect real-world grasping scenarios. It also employs a special set of vision processing techniques to close the simulation-to-reality gap in the perception. Furthermore, it achieves robust grasping by adopting a tweezer-extended gripper and a grasping procedure. We demonstrate DRAPER’s generalisability across different deep-
learning methods and robotic platforms, offering valuable insights to the cloth manipulation research community. Please visit our project website https://sites.google.com/view/draper-pnp for demonstration videos and code.
on both flattening and folding tasks with different types of fabrics varying in material, size, and colour. We introduce the DRAPER framework to enable this comprehensive study, which reliably reflects the true capabilities of these neural
controllers. It specifically addresses real-world grasping errors, such as misgrasping and multilayer grasping, through real-world adaptations of the simulation environment to provide data trajectories that closely reflect real-world grasping scenarios. It also employs a special set of vision processing techniques to close the simulation-to-reality gap in the perception. Furthermore, it achieves robust grasping by adopting a tweezer-extended gripper and a grasping procedure. We demonstrate DRAPER’s generalisability across different deep-
learning methods and robotic platforms, offering valuable insights to the cloth manipulation research community. Please visit our project website https://sites.google.com/view/draper-pnp for demonstration videos and code.
Original language | English |
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Publication status | Published - 2025 |
Event | 2025 IEEE 21st International Conference on Automation Science and Engineering - Los Angeles, United States Duration: 17 Aug 2025 → 21 Aug 2025 https://2025.ieeecase.org/ |
Conference
Conference | 2025 IEEE 21st International Conference on Automation Science and Engineering |
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Abbreviated title | IEEE CASE 2025 |
Country/Territory | United States |
City | Los Angeles |
Period | 17/08/25 → 21/08/25 |
Internet address |