Soft Contact Simulation and Manipulation Learning of Deformable Objects with Vision-based Tactile Sensor (2405.07237v1)
Abstract: Deformable object manipulation is a classical and challenging research area in robotics. Compared with rigid object manipulation, this problem is more complex due to the deformation properties including elastic, plastic, and elastoplastic deformation. In this paper, we describe a new deformable object manipulation method including soft contact simulation, manipulation learning, and sim-to-real transfer. We propose a novel approach utilizing Vision-Based Tactile Sensors (VBTSs) as the end-effector in simulation to produce observations like relative position, squeezed area, and object contour, which are transferable to real robots. For a more realistic contact simulation, a new simulation environment including elastic, plastic, and elastoplastic deformations is created. We utilize RL strategies to train agents in the simulation, and expert demonstrations are applied for challenging tasks. Finally, we build a real experimental platform to complete the sim-to-real transfer and achieve a 90% success rate on difficult tasks such as cylinder and sphere. To test the robustness of our method, we use plasticine of different hardness and sizes to repeat the tasks including cylinder and sphere. The experimental results show superior performances of deformable object manipulation with the proposed method.
- J. Zhu, A. Cherubini, C. Dune, D. Navarro-Alarcon, F. Alambeigi, D. Berenson, F. Ficuciello, K. Harada, J. Kober, X. Li et al., “Challenges and outlook in robotic manipulation of deformable objects,” IEEE Robotics & Automation Magazine, vol. 29, no. 3, pp. 67–77, 2022.
- F. Liu, F. Sun, B. Fang, X. Li, S. Sun, and H. Liu, “Hybrid robotic grasping with a soft multimodal gripper and a deep multistage learning scheme,” IEEE Transactions on Robotics, vol. 39, no. 3, pp. 2379–2399, 2023.
- R. S. Sutton, A. G. Barto et al., “Introduction to reinforcement learning,” 1998.
- S. Fujimoto, H. Hoof, and D. Meger, “Addressing function approximation error in actor-critic methods,” in International conference on machine learning. PMLR, 2018, pp. 1587–1596.
- C. Lu, J. Wang, and S. Luo, “Surface following using deep reinforcement learning and a gelsighttactile sensor,” arXiv preprint arXiv:1912.00745, 2019.
- A. Church, J. Lloyd, R. Hadsell, and N. F. Lepora, “Deep reinforcement learning for tactile robotics: Learning to type on a braille keyboard,” IEEE Robotics and Automation Letters, vol. 5, no. 4, pp. 6145–6152, 2020.
- T. Bi, C. Sferrazza, and R. D’Andrea, “Zero-shot sim-to-real transfer of tactile control policies for aggressive swing-up manipulation,” IEEE Robotics and Automation Letters, vol. 6, no. 3, pp. 5761–5768, 2021.
- Z. Huang, Y. Hu, T. Du, S. Zhou, H. Su, J. B. Tenenbaum, and C. Gan, “Plasticinelab: A soft-body manipulation benchmark with differentiable physics,” arXiv preprint arXiv:2104.03311, 2021.
- S. Zhang, Z. Chen, Y. Gao, W. Wan, J. Shan, H. Xue, F. Sun, Y. Yang, and B. Fang, “Hardware technology of vision-based tactile sensor: A review,” IEEE Sensors Journal, 2022.
- W. Yuan, S. Dong, and E. H. Adelson, “Gelsight: High-resolution robot tactile sensors for estimating geometry and force,” Sensors, vol. 17, no. 12, p. 2762, 2017.
- B. Ward-Cherrier, N. Pestell, L. Cramphorn, B. Winstone, M. E. Giannaccini, J. Rossiter, and N. F. Lepora, “The tactip family: Soft optical tactile sensors with 3d-printed biomimetic morphologies,” Soft robotics, vol. 5, no. 2, pp. 216–227, 2018.
- B. Fang, H. Xue, F. Sun, Y. Yang, and R. Zhu, “A cross-modal tactile sensor design for measuring robotic grasping forces,” Industrial Robot: the international journal of robotics research and application, 2019.
- S. Zhang, Y. Yang, J. Shan, F. Sun, and B. Fang, “A novel vision-based tactile sensor using lamination and gilding process for improvement of outdoor detection and maintainability,” IEEE Sensors Journal, 2023.
- S. Luo, W. Yuan, E. Adelson, A. G. Cohn, and R. Fuentes, “Vitac: Feature sharing between vision and tactile sensing for cloth texture recognition,” in 2018 IEEE International Conference on Robotics and Automation (ICRA). IEEE, 2018, pp. 2722–2727.
- Y. Chen, J. Lin, X. du, B. Fang, and S. Li, “Non-destructive fruit firmness evaluation using vision-based tactile information,” in 2020 IEEE International Conference on Robotics and Automation (ICRA). IEEE, 2022, pp. 2303–2309.
- J. Lloyd and N. F. Lepora, “Goal-driven robotic pushing using tactile and proprioceptive feedback,” IEEE Transactions on Robotics, 2021.
- Y. She, S. Wang, S. Dong, N. Sunil, A. Rodriguez, and E. Adelson, “Cable manipulation with a tactile-reactive gripper,” The International Journal of Robotics Research, vol. 40, no. 12-14, pp. 1385–1401, 2021.
- C. Sferrazza, A. Wahlsten, C. Trueeb, and R. D’Andrea, “Ground truth force distribution for learning-based tactile sensing: A finite element approach,” IEEE Access, vol. 7, pp. 173 438–173 449, 2019.
- Z. Hu, T. Han, P. Sun, J. Pan, and D. Manocha, “3-d deformable object manipulation using deep neural networks,” IEEE Robotics and Automation Letters, vol. 4, no. 4, pp. 4255–4261, 2019.
- Y. Hu, Y. Fang, Z. Ge, Z. Qu, Y. Zhu, A. Pradhana, and C. Jiang, “A moving least squares material point method with displacement discontinuity and two-way rigid body coupling,” ACM Transactions on Graphics (TOG), vol. 37, no. 4, pp. 1–14, 2018.
- Z. Chen, S. Zhang, S. Luo, F. Sun, and B. Fang, “Tacchi: A pluggable and low computational cost elastomer deformation simulator for optical tactile sensors,” IEEE Robotics and Automation Letters, vol. 8, no. 3, pp. 1239–1246, 2023.
- Z. Chen, S. Zhang, Y. Sun, S. Luo, F. Sun, and B. Fang, “Plasticine manipulation simulation with optical tactile sensing,” in ICRA ViTac Workshop, 2023.
- M. Gao, A. P. Tampubolon, C. Jiang, and E. Sifakis, “An adaptive generalized interpolation material point method for simulating elastoplastic materials,” ACM Transactions on Graphics (TOG), vol. 36, no. 6, pp. 1–12, 2017.
- S. Li, Z. Huang, T. Du, H. Su, J. B. Tenenbaum, and C. Gan, “Contact points discovery for soft-body manipulations with differentiable physics,” arXiv preprint arXiv:2205.02835, 2022.
- C. Matl and R. Bajcsy, “Deformable elasto-plastic object shaping using an elastic hand and model-based reinforcement learning,” in 2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS). IEEE, 2021, pp. 3955–3962.
- A. Church, J. Lloyd, and N. F. Lepora, “Tactile sim-to-real policy transfer via real-to-sim image translation,” in Conference on Robot Learning. PMLR, 2022, pp. 1645–1654.
- Z. Zhao and Z. Lu, “Multi-purpose tactile perception based on deep learning in a new tendon-driven optical tactile sensor,” in 2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2022, pp. 2099–2104.
- Y. Wu, W. Yan, T. Kurutach, L. Pinto, and P. Abbeel, “Learning to manipulate deformable objects without demonstrations,” arXiv preprint arXiv:1910.13439, 2019.
- Z. Si, Z. Zhu, A. Agarwal, S. Anderson, and W. Yuan, “Grasp stability prediction with sim-to-real transfer from tactile sensing,” in 2022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2022, pp. 7809–7816.
- M. L. Preti, M. Totaro, E. Falotico, M. Crepaldi, and L. Beccai, “Online pressure map reconstruction in a multitouch soft optical waveguide skin,” IEEE/ASME Transactions on Mechatronics, 2022.
- H. Wang, M. Totaro, and L. Beccai, “Development of fully shielded soft inductive tactile sensors,” in 2019 26th IEEE International Conference on Electronics, Circuits and Systems (ICECS). IEEE, 2019, pp. 246–249.
- D. F. Gomes, Z. Lin, and S. Luo, “Geltip: A finger-shaped optical tactile sensor for robotic manipulation,” in 2020 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2020, pp. 9903–9909.
- Y. Hu, T.-M. Li, L. Anderson, J. Ragan-Kelley, and F. Durand, “Taichi: a language for high-performance computation on spatially sparse data structures,” ACM Transactions on Graphics (TOG), vol. 38, no. 6, p. 201, 2019.
- Y. Wang, W. Huang, B. Fang, F. Sun, and C. Li, “Elastic tactile simulation towards tactile-visual perception,” in Proceedings of the 29th ACM International Conference on Multimedia, 2021, pp. 2690–2698.
- S. Zhang, Y. Sun, J. Shan, Z. Chen, F. Sun, Y. Yang, and B. Fang, “Tirgel: A visuo-tactile sensor with total internal reflection mechanism for external observation and contact detection,” IEEE Robotics and Automation Letters, 2023.
- K. Shimonomura, “Tactile image sensors employing camera: A review,” Sensors, vol. 19, no. 18, p. 3933, 2019.
- D. F. Gomes, P. Paoletti, and S. Luo, “Generation of gelsight tactile images for sim2real learning,” IEEE Robot. Automat. Lett., vol. 6, no. 2, pp. 4177–4184, 2021.
- W. Sui and D. Zhang, “Four methods for roundness evaluation,” Physics Procedia, vol. 24, pp. 2159–2164, 2012.
- Jianhua Shan (4 papers)
- Yuhao Sun (15 papers)
- Shixin Zhang (7 papers)
- Fuchun Sun (127 papers)
- Zixi Chen (18 papers)
- Zirong Shen (3 papers)
- Cesare Stefanini (12 papers)
- Yiyong Yang (2 papers)
- Shan Luo (74 papers)
- Bin Fang (50 papers)