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A Model of the User's Proximity for Bayesian Inference

机译:用户对贝叶斯推论的额外型号

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Embodied nonverbal cues are fundamental for regulating human-human social interactions. The physical embodiment of robots makes it likely that they will have to exhibit appropriate nonverbal interactive behaviors. In this paper we propose a model of the user's proximity based on a superposition of quasi-Gaussian probability distributions which allows to express findings from HRI trials regarding distances and direction of approach in a human-robot interaction scenario. The way the model is formulated is suitable for well-established Bayesian filtering techniques, and thus the inference of the preferred distance and direction of approach in a human robot interaction scenario can be regarded as a state estimation problem. Results derived from simulations show the effectiveness of the inference process.
机译:体现的非语言提示是调节人类社交互动的基础。机器人的物理实施例使得它们可能必须表现出适当的非语言交互行为。在本文中,我们提出了一种基于准高斯概率分布的叠加的用户接近的模型,这允许从人机交互场景中表达来自HRI试验的结果的结果。制定模型的方式适用于良好的贝叶斯滤波技术,因此人机机器人交互方案中的优选距离和方法的推断可以被视为状态估计问题。源自模拟的结果显示了推理过程的有效性。

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