Deep Reinforcement Learning for a Humanoid Robot Soccer Player

被引:0
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作者
Isaac Jesus da Silva
Danilo Hernani Perico
Thiago Pedro Donadon Homem
Reinaldo Augusto da Costa Bianchi
机构
[1] FEI University Center,Federal Institute of Education
[2] Science and Technology of São Paulo,undefined
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关键词
Deep reinforcement learning; Humanoid robots; Robot cognition; RoboCup soccer competition;
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摘要
This paper investigates the use of Deep Reinforcement Learning (DRL) applied to the humanoid robot soccer environment, where a robot must learn from basic to complex skills while it interacts with the environment through images received by its own camera. To do so, the Dueling Double DQN algorithm is used: it receives the images from the robot’s camera and decides on which discrete action should be performed, such as walk forward, turn to the left or kick the ball. The first experiments were performed in a robotic simulator in which the robot could learn, with DRL, three different tasks: to walk towards the ball, to act like a penalty taker and to act like a goalkeeper. In the second experiment, the learning obtained in the task to walk towards the ball was transferred to a real humanoid robot and a similar behavior could be observed, even though the environment was not exactly the same when the domain was changed. Results showed that it is possible to use DRL to learn tasks related to the role of a humanoid robot-soccer player, such as goalkeeper and penalty taker.
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