Conference item
Towards monocular vision based obstacle avoidance through deep reinforcement learning
- Abstract:
- Obstacle avoidance is a fundamental requirement for autonomous robots which operate in, and interact with, the real world. When perception is limited to monocular vision avoiding collision becomes significantly more challenging due to the lack of 3D information. Conventional path planners for obstacle avoidance require tuning a number of parameters and do not have the ability to directly benefit from large datasets and continuous use. In this paper, a dueling architecture based deep double-Q network (D3QN) is applied for obstacle avoidance, using only monocular RGB vision. Based on the dueling and double-Q mechanisms, D3QN can efficiently learn how to avoid obstacles even with very noisy depth information predicted from RGB image. Extensive experiments show that D3QN enables twofold acceleration on learning compared with a normal deep Q network and the models trained solely in virtual environments can be directly transferred to real robots, generalizing well to various new environments with previously unseen dynamic objects.
- Publication status:
- Not published
- Peer review status:
- Peer reviewed
Actions
Access Document
- Files:
-
-
(Preview, Accepted manuscript, pdf, 3.6MB, Terms of use)
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Authors
- Publication date:
- 2017-07-15
- Event title:
- Robotics: Science and Systems (RSS 2017) Workshop
- Event location:
- Boston, MA, USA
- Event website:
- http://juxi.net/workshop/deep-learning-rss-2017/
- Event start date:
- 2017-07-15
- Event end date:
- 2017-07-15
- Language:
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English
- Pubs id:
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832758
- Local pid:
-
pubs:832758
- Deposit date:
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2020-02-26
- ARK identifier:
Terms of use
- Copyright holder:
- Xie et al.
- Copyright date:
- 2017
- Notes:
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Presented at the Deep Learning Workshop at Robotics: Science and Systems Conference, Boston, USA, July 15, 2017.
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