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Long-term robot motion planning for active sound source localization with Monte Carlo tree search

机译:使用蒙特卡洛树搜索进行有源声源定位的长期机器人运动计划

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摘要

We consider the problem of controlling a mobile robot in order to localize a sound source. A microphone array can provide the robot with information on source localization. By combining this information with the movements of the robot, the localization accuracy can be improved. However, random robot motion or short-term planning may not result in optimal localization. In this paper, we propose an optimal long-term robot motion planning algorithm for active source localization. We introduce a Monte Carlo tree search (MCTS) method to find a sequence of robot actions that minimize the entropy of the belief on the source location. A tree of possible robot movements which balances between exploration and exploitation is first constructed. Then, the movement that leads to minimum uncertainty is selected and executed. Experiments and statistical results show the effectiveness of our proposed method on improving sound source localization in the long term compared to other motion planning methods.
机译:我们考虑控制移动机器人以定位声源的问题。麦克风阵列可以为机器人提供有关源定位的信息。通过将此信息与机器人的运动相结合,可以提高定位精度。但是,随机的机器人运动或短期计划可能不会导致最佳定位。在本文中,我们提出了一种用于有源源定位的最佳长期机器人运动计划算法。我们引入了蒙特卡罗树搜索(MCTS)方法来查找一系列机器人动作,以最大程度地减少对源位置的信念的熵。首先构建一棵可能的机器人运动树,该树在探索和开发之间取得平衡。然后,选择并执行导致最小不确定性的运动。实验和统计结果表明,与其他运动规划方法相比,从长远来看,我们提出的方法在改善声源定位方面是有效的。

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