Robot docking based on omnidirectional vision and reinforcement learning
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摘要
We present a system for visual robotic docking using an omnidirectional camera coupled with the actor critic reinforcement learning algorithm. The system enables a PeopleBot robot to locate and approach a table so that it can pick an object from it using the pan-tilt camera mounted on the robot. We use a staged approach to solve this problem as there are distinct subtasks and different sensors used. Starting with random wandering of the robot until the table is located via a landmark, then a network trained via reinforcement allows the robot to turn to and approach the table. Once at the table the robot is to pick the object from it. We argue that our approach has a lot of potential allowing the learning of robot control for navigation and remove the need for internal maps of the environment. This is achieved by allowing the robot to learn couplings between motor actions and the position of a landmark.
论文关键词:Reinforcement learning,Robot control,Robotics,Neural networks
论文评审过程:Received 28 October 2005, Accepted 28 November 2005, Available online 17 February 2006.
论文官网地址:https://doi.org/10.1016/j.knosys.2005.11.018