Quadrupedal Locomotion
Quadrupedal locomotion research aims to enable robots to move efficiently and robustly on diverse terrains, mimicking the agility of animals. Current efforts focus on improving locomotion control through reinforcement learning, often employing model predictive control (MPC) or neural networks (including recurrent and transformer architectures), and integrating advanced perception (e.g., vision, lidar) for terrain awareness and manipulation capabilities. These advancements are significant for expanding the capabilities of robots in challenging environments, with applications ranging from search and rescue to industrial automation and exploration.
Papers
Learning Multi-Agent Collaborative Manipulation for Long-Horizon Quadrupedal Pushing
Chuye Hong, Yuming Feng, Yaru Niu, Shiqi Liu, Yuxiang Yang, Wenhao Yu, Tingnan Zhang, Jie Tan, Ding Zhao
Multi-Objective Algorithms for Learning Open-Ended Robotic Problems
Martin Robert, Simon Brodeur, Francois Ferland
QuadWBG: Generalizable Quadrupedal Whole-Body Grasping
Jilong Wang, Javokhirbek Rajabov, Chaoyi Xu, Yiming Zheng, He Wang
Traversability-Aware Legged Navigation by Learning from Real-World Visual Data
Hongbo Zhang, Zhongyu Li, Xuanqi Zeng, Laura Smith, Kyle Stachowicz, Dhruv Shah, Linzhu Yue, Zhitao Song, Weipeng Xia, Sergey Levine, Koushil Sreenath, Yun-hui Liu
Reinforcement Learning For Quadrupedal Locomotion: Current Advancements And Future Perspectives
Maurya Gurram, Prakash Kumar Uttam, Shantipal S. Ohol
MetaLoco: Universal Quadrupedal Locomotion with Meta-Reinforcement Learning and Motion Imitation
Fatemeh Zargarbashi, Fabrizio Di Giuro, Jin Cheng, Dongho Kang, Bhavya Sukhija, Stelian Coros
PA-LOCO: Learning Perturbation-Adaptive Locomotion for Quadruped Robots
Zhiyuan Xiao, Xinyu Zhang, Xiang Zhou, Qingrui Zhang