人机伙伴框架下的机器人接近与参与

Ely Repiso, A. Garrell, A. Sanfeliu
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引用次数: 13

摘要

本文提出了一种新的模型,使机器人能够在与人并排行走时以类似人类的行为接近和吸引人。这种方法扩展了我们之前的工作[1],它允许机器人根据被陪伴的人和动态环境来调整其导航行为。在目前的工作中,机器人能够预测人-机器人群体与接近的人之间的最佳相遇点。然后,在相遇点,机器人修改其位置以实现与两个人的接触。使用考虑所有人预测的梯度下降法计算相遇点。此外,我们利用了扩展社会力模型(ESFM),并对其进行了修改,使其包含了动态目标。该方法已在几种情况下和现实生活实验中得到验证,此外,还实现了用户研究,以揭示机器人在该任务中的社会可接受性。
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Robot Approaching and Engaging People in a Human-Robot Companion Framework
This paper presents a new model to make robots capable of approaching and engaging people with a human-like behavior, while they are walking in a side-by-side formation with a person. This method extends our previous work [1], which allows the robot to adapt its navigation behaviour according to the person being accompanied and the dynamic environment. In the current work, the robot is able to predict the best encounter point between the human-robot group and the approached person. Then, in the encounter point the robot modifies its position to achieve an engagement with both people. The encounter point is computed using a gradient descent method that takes into account all people predictions. Moreover, we make use of the Extended Social Force Model (ESFM), and it is modified to include the dynamic goal. The method has been validated over several situations and in real-life experiments, in addition, a user study has been realized to reveal the social acceptability of the robot in this task.
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