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Modeling user expertise for choosing levels of shared autonomy

机译:建模用户专业知识,用于选择共享自治水平

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In shared autonomy, a robot and human user both have some level of control in order to achieve a shared goal. Choosing the balance of control given to the user and the robot can be a challenging problem since different users have different preferences and vary in skill levels when operating a robot. We propose using a novel formulation of Partially Observable Markov Decision Process (POMDP) to represent a model of the user's expertise in controlling the robot. The POMDP uses observations from the user's actions and from the environment to update the belief of the user's skill and chooses a level of control between the robot and the user. The level of control given between the user and the robot is encapsulated in macro-action controllers. A user study was run to test the performance of our formulation. Users drive a simulated robot through an obstacle-filled map while the POMDP model chooses appropriate macro-action controllers based on the belief state of the user's skill level. The results of the user study show that our model can encapsulate user skill. The results also show that using the controller with greater robot autonomy helped users of low skill avoid obstacles more than it helped users of high skill.
机译:在共享自主权中,机器人和人类用户都具有一定程度的控制,以实现共享目标。选择给予用户的控制平衡和机器人可能是一个具有挑战性的问题,因为不同的用户在操作机器人时具有不同的偏好并在技能水平中变化。我们建议使用部分可观察的马尔可夫决策过程(POMDP)的新制定,以代表用户控制机器人的专业知识的模型。 POMDP使用用户的操作和环境从环境中的观察来更新用户技能的信念,并在机器人和用户之间选择一个控制级别。在宏动作控制器中封装用户和机器人之间给出的控制水平。运行用户学习以测试我们配方的性能。用户通过障碍地图驱动模拟机器人,而POMDP模型基于用户技能水平的信仰状态选择适当的宏动作控制器。用户学习的结果表明,我们的模型可以封装用户技能。结果还表明,使用具有更高机器人自主权的控制器帮助用户低技能的用户避免了障碍物,而不是帮助用户高技能。

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