Robotic gaze control using reinforcement learning

Haptic Audio Visual Environments and Games(2012)

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摘要
This work examines how adaptive control can learn to point a camera at the active speaker in a conversation by using a Reinforcement Learning approach with audio and video data. A motivating scenario for this problem is a robotic platform that interacts with people around its environment. Using Reinforcement Learning, the task is specified with an observable objective referred to as the reward signal. Specifying this task with a reward signal enables an adaptive controller to improve its performance with experience. The reward for this task is generated by a visual feedback from the conversation participants that is detected by the robot's camera system. Multiple experiments have been performed on a robot system with audiovisual data to examine the feasibility and potential of this approach. Our experimental results demonstrate that the system learns very fast to identify the active speakers. Furthermore, our approach inherently learns how to deal with egonoise that originates from the robot's motor or background noise from the environment.
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关键词
adaptive control,audio signal processing,cameras,feedback,human-robot interaction,intelligent robots,learning (artificial intelligence),robot vision,speaker recognition,active speaker identification,adaptive controller,audiovisual data,camera pointing,egonoise,reinforcement learning,reward signal,robotic gaze control,visual feedback,human robot interaction,learning artificial intelligence
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