DeRi-IGP: Learning to Manipulate Rigid Objects Using Deformable Linear Objects via Iterative Grasp-Pull | IEEE Journals & Magazine | IEEE Xplore

DeRi-IGP: Learning to Manipulate Rigid Objects Using Deformable Linear Objects via Iterative Grasp-Pull


Abstract:

Robotic manipulation of rigid objects via deformable linear objects (DLO) such as ropes is an emerging field of research with applications in various rigid object transpo...Show More

Abstract:

Robotic manipulation of rigid objects via deformable linear objects (DLO) such as ropes is an emerging field of research with applications in various rigid object transportation tasks. A few methods that exist in this field suffer from limited robot action and operational space, poor generalization ability, and expensive model-based development. To address these challenges, we propose a universally applicable moving primitive called Iterative Grasp-Pull (IGP). We also introduce a novel vision-based neural policy that learns to parameterize the IGP primitive to manipulate DLO and transport their attached rigid objects to the desired goal locations. Additionally, our decentralized algorithm design allows collaboration among multiple agents to manipulate rigid objects using DLO. We evaluated the effectiveness of our approach in both simulated and real-world environments for a variety of soft-rigid body manipulation tasks. In the real world, we also demonstrate the effectiveness of our decentralized approach through human-robot collaborative transportation of rigid objects to given goal locations. We also showcase the large operational space of IGP primitive by solving distant object acquisition tasks. Lastly, we compared our approach with several model-based and learning-based baseline methods. The results indicate that our method surpasses other approaches by a significant margin.
Published in: IEEE Robotics and Automation Letters ( Volume: 10, Issue: 4, April 2025)
Page(s): 3166 - 3173
Date of Publication: 07 February 2025

ISSN Information:

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I. Introduction

The heterogeneous system manipulation task requires one or more robots to manipulate a rigid object via the connected deformable (soft) objects [1]. Such configuration applies to various scenarios, such as transporting payloads with cargo sleds in snowy terrains and hauling tree chunks using ropes in forestry. The soft bodies in these systems provide enhanced maneuverability and portability because of their high degree of freedom. Consequently, we believe it is important to develop frameworks that can operate robots under such a heterogeneous configuration, leading to improvements in their capabilities and expanded application across a wide range of object transportation tasks.

Select All
1.
Z. Wang and A. H. Qureshi, "DeRi-Bot: Learning to collaboratively manipulate rigid objects via deformable objects", IEEE Robot. Automat. Lett., vol. 8, no. 10, pp. 6355-6362, Oct. 2023.
2.
B. Donald, L. Gariepy and D. Rus, "Distributed manipulation of multiple objects using ropes", Proc. 2000 ICRA Millennium Conf. IEEE Int. Conf. Robot. Automat. Symposia Proc., vol. 1, pp. 450-457, 2000.
3.
P. Corke, J. Trevelyan, B. Donald, L. Gariepy and D. Rus, "Experiments in constrained prehensile manipulation: Distributed manipulation with ropes" in Experimental Robotics VI, Springer, pp. 25-36, 2000.
4.
T. Maneewarn and P. Detudom, "Mechanics of cooperative nonprehensile pulling by multiple robots", Proc. 2005 IEEE/RSJ Int. Conf. Intell. Robots Syst., pp. 2004-2009, 2005.
5.
T. Du et al., "DiffPD: Differentiable projective dynamics", ACM Trans. Graph., vol. 41, no. 2, 2021.
6.
D.-A. Huang et al., "Neural task graphs: Generalizing to unseen tasks from a single video demonstration", Proc. IEEE/CVF Conf. Comput. Vis. Pattern Recognit., pp. 8565-8574, 2019.
7.
F. Liu, E. Su, J. Lu, M. Li and M. C. Yip, "Robotic manipulation of deformable rope-like objects using differentiable compliant position-based dynamics", IEEE Robot. Automat. Lett., vol. 8, no. 7, pp. 3964-3971, Jul. 2023.
8.
J. Sanchez, J. A. Corrales Ramon, B. C. BOUZGARROU and Y. Mezouar, "Robotic manipulation and sensing of deformable objects in domestic and industrial applications: A survey", Int. J. Robot. Res., vol. 37, pp. 688-716, 2018.
9.
A. Nair et al., "Combining self-supervised learning and imitation for vision-based rope manipulation", Proc. 2017 IEEE Int. Conf. Robot. Automat., pp. 2146-2153, 2017.
10.
D. Pathak et al., "Zero-shot visual imitation", Proc. IEEE Conf. Comput. Vis. Pattern Recognit. Workshop, pp. 2131-21313, 2018.
11.
J. Schulman, J. Ho, C. Lee and P. Abbeel, "Learning from demonstrations through the use of non-rigid registration", Proc. Robot. Res.: 16th Int. Symp. ISRR, pp. 339-354, 2016.
12.
P. Sundaresan et al., "Learning rope manipulation policies using dense object descriptors trained on synthetic depth data", Proc. 2020 IEEE Int. Conf. Robot. Automat., pp. 9411-9418, 2020.
13.
A. Wang, T. Kurutach, K. Liu, P. Abbeel and A. Tamar, "Learning robotic manipulation through visual planning and acting", Proc. Robot.: Sci. Syst., 2019.
14.
M. Yan, Y. Zhu, N. Jin and J. Bohg, "Self-supervised learning of state estimation for manipulating deformable linear objects", IEEE Robot. Automat. Lett., vol. 5, no. 2, pp. 2372-2379, Apr. 2020.
15.
W. Yan, A. Vangipuram, P. Abbeel and L. Pinto, "Learning predictive representations for deformable objects using contrastive estimation", Proc. Conf. Robot Learn., pp. 564-574, 2021.
16.
C. Chi, B. Burchfiel, E. Cousineau, S. Feng and S. Song, "Iterative residual policy for goal-conditioned dynamic manipulation of deformable objects", Proc. Robot.: Sci. Syst., 2022.
17.
H. Zhang, J. Ichnowski, D. Seita, J. Wang, H. Huang and K. Goldberg, "Robots of the lost Arc: Self-supervised learning to dynamically manipulate fixed-endpoint cables", Proc. 2021 IEEE Int. Conf. Robot. Automat., pp. 4560-4567, 2021.
18.
Y. Wu et al., "Learning to manipulate deformable objects without demonstrations", Proc. 16th Robot.: Sci. Syst., 2020.
19.
A. Zeng, S. Song, J. Lee, A. Rodriguez and T. Funkhouser, "TossingBot: Learning to throw arbitrary objects with residual physics", IEEE Trans. Robot., vol. 36, no. 4, pp. 1307-1319, Aug. 2020.
20.
Z. Wang and N. Papanikolopoulos, "Spatial action maps augmented with visit frequency maps for exploration tasks", Proc. 2021 IEEE/RSJ Int. Conf. Intell. Robots Syst., pp. 3175-3181, 2021.
21.
X. Chen, A. N. Iyer, Z. Wang and A. H. Qureshi, "Efficient Q-learning over visit frequency maps for multi-agent exploration of unknown environments", Proc. IEEE/RSJ Int. Conf. Intell. Robots Syst., pp. 1893-1900, 2023.
22.
K. He, X. Zhang, S. Ren and J. Sun, "Deep residual learning for image recognition", Proc. IEEE Conf. Comput. Vis. Pattern Recognit., pp. 770-778, 2016.
23.
F. Rosenblatt, "The perceptron: A probabilistic model for information storage and organization in the brain", Psychol. Rev., vol. 65, no. 6, pp. 386-408, 1958.
24.
L.-C. Chen, Y. Zhu, G. Papandreou, F. Schroff and H. Adam, "Encoder-decoder with atrous separable convolution for semantic image segmentation", Proc. Eur. Conf. Comput. Vis., pp. 801-818, 2018.
25.
E. Todorov, T. Erez and Y. Tassa, "MuJoCo: A physics engine for model-based control", Proc. 2012 IEEE/RSJ Int. Conf. Intell. Robots Syst, pp. 5026-5033, 2012.
26.
W. Falcon et al., "PyTorch lightning", vol. 3, 2019, [online] Available: https://github.com/PyTorchLightning/pytorch-lightning.
27.
I. Loshchilov and F. Hutter, "Decoupled weight decay regularization", Proc. Int. Conf. Learn. Representations, 2017.
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References

References is not available for this document.