Towards a Predictive Behavioural Model for Service Robots in Shared Environments

Alessandro Antonucci, D. Fontanelli
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引用次数: 7

Abstract

Service robots are increasingly applied in real life environments populated with human beings. In such a challenging scenario, the autonomous robots have to avoid collision in a “natural” way, that is to execute trajectories that a human would follow. This challenging goal can be efficiently tackled if a sufficiently descriptive human motion model is available, in order to predict future pedestrian behaviour and hence safely planning the correct route. In this paper, we move a first step towards a motion model that is able to describe to a certain extent the nonverbal negotiation of spaces in shared environments, still preserving its simplicity for ease of computation. The avoidance task is shared among the robot and the pedestrians and thus human-like trajectories can be generated. Simulations and application to actual pedestrian data are presented to validate the model.
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面向共享环境下服务机器人的预测行为模型
服务机器人越来越多地应用于人类居住的现实生活环境中。在这样一个具有挑战性的场景中,自主机器人必须以一种“自然”的方式避免碰撞,即执行人类会遵循的轨迹。如果有一个充分描述人类运动的模型,为了预测未来行人的行为,从而安全地规划正确的路线,这个具有挑战性的目标可以有效地解决。在本文中,我们向一个运动模型迈出了第一步,该模型能够在一定程度上描述共享环境中空间的非语言协商,同时仍然保持其简单性以便于计算。回避任务由机器人和行人共同完成,因此可以生成类似人类的轨迹。通过对实际行人数据的仿真和应用验证了该模型的有效性。
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