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DreamWaQ: Learning Robust Quadrupedal Locomotion With Implicit Terrain Imagination via Deep Reinforcement Learning
  • 작성자관리자
  • 작성일2023.09.14
  • 조회수96
I Made Aswin Nahendra, Byeongho Yu, Hyun Myung

IEEE International Conference on Robotics and Automation (ICRA)

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BibTeX
  • 저자 : I Made Aswin Nahendra, Byeongho Yu, Hyun Myung
  • 논문명 : DreamWaQ: Learning Robust Quadrupedal Locomotion With Implicit Terrain Imagination via Deep Reinforcement Learning
  • 학회명 : IEEE International Conference on Robotics and Automation (ICRA)
  • 발간년도 : 2023
  • 발간년도 : 2023
  • 발간월 : May
  • 초록 : Quadrupedal robots resemble the physical ability of legged animals to walk through unstructured terrains. However, designing a controller for quadrupedal robots poses a significant challenge due to their functional complexity and requires adaptation to various terrains. Recently, deep reinforcement learning, inspired by how legged animals learn to walk from their experiences, has been utilized to synthesize natural quadrupedal locomotion. However, state-of-the-art methods strongly depend on a complex and reliable sensing framework. Furthermore, prior works that rely only on proprioception have shown a limited demonstration for overcoming challenging terrains, especially for a long distance. This work proposes a novel quadrupedal locomotion learning framework that allows quadrupedal robots to walk through challenging terrains, even with limited sensing modalities. The proposed framework was validated in real-world outdoor environments with varying conditions within a single run for a long distance.
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