基于贝叶斯网络随机经验表示的学习机制与对话策略集成模型

T. Inamura, M. Inaba, H. Inoue
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引用次数: 17

摘要

我们提出了一种基于人与机器人交互的个人机器人逐渐获得自主行为的方法。该方法利用贝叶斯网络将行为决策模型和对话控制模型相结合。该模型使用统计过程处理交互经验,决策的确定性用随机推理的确定性因子表示。机器人不仅决定行为,还利用确定性因素向用户提出建议和提问。因此,确定性因素使行为习得更有效。研究了该方法在移动机器人避障任务中的可行性。通过在真实移动机器人上的实验,我们证实了移动机器人只需少量的教与学,就能获得针对环境变化和传感器不确定性的鲁棒行为决策模型。
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Integration model of learning mechanism and dialogue strategy based on stochastic experience representation using Bayesian network
We propose a method for personal robots to acquire autonomous behaviors gradually based on interaction between human and robots. In this method, behavior decision models and dialogue control models are integrated using Bayesian networks. This model can treat interaction experiences using statistical processes, and sureness of decision making is represented by certainty factors using stochastic reasoning. The robots not only decide behavior, but also make suggestions to and ask questions of the user using the certainty factors. Consequently, the certainty factors enable the behavior acquisition to be more effective. We investigate the feasibility of this method with obstacle avoidance tasks for mobile robots. Through experiments on a real mobile robot, we have confirmed that the mobile robot acquires robust behavior decision models against changes of environment and uncertainties of sensors, with only a few teaching and learning sessions.
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