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학술저널
저자정보
(울산과학기술원) (울산과학기술원) (울산과학기술원) (울산과학기술원)
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한국로봇학회(논문지) 로봇학회 논문지 로봇학회 논문지 제14권 제1호
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40 - 49 (10page)

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초록· 키워드

Reinforcement learning has been applied to various problems in robotics. However, it was still hard to train complex robotic manipulation tasks since there is a few models which can be applicable to general tasks. Such general models require a lot of training episodes. In these reasons, deep neural networks which have shown to be good function approximators have not been actively used for robot manipulation task. Recently, some of these challenges are solved by a set of methods, such as Guided Policy Search, which guide or limit search directions while training of a deep neural network based policy model. These frameworks are already applied to a humanoid robot, PR2. However, in robotics, it is not trivial to adjust existing algorithms designed for one robot to another robot. In this paper, we present our implementation of Guided Policy Search to the robotic arms of the Baxter Research Robot. To meet the goals and needs of the project, we build on an existing implementation of Baxter Agent class for the Guided Policy Search algorithm code using the built-in Python interface. This work is expected to play an important role in popularizing robot manipulation reinforcement learning methods on cost-effective robot platforms.
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목차

  1. Abstract
  2. 1. 서론
  3. 2. 관련 연구
  4. 3. 심층 시각기반 행동 정책의 제한된 탐색
  5. 4. GPS를 백스터 연구 로봇에 적용하는 과정
  6. 5. 실험
  7. 6. 결론 및 추후과제
  8. References

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UCI(KEPA) : I410-ECN-0101-2020-559-001256457