Don’t Forget to Buy Milk: Contextually Aware Grocery Reminder Household Robot

Ali Ayub, C. Nehaniv, K. Dautenhahn
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引用次数: 3

Abstract

Assistive robots operating in household environments would require items to be available in the house to perform assistive tasks. However, when these items run out, the assistive robot must remind its user to buy the missing items. In this paper, we present a computational architecture that can allow a robot to learn personalized contextual knowledge of a household through interactions with its user. The architecture can then use the learned knowledge to make predictions about missing items from the household over a long period of time. The architecture integrates state-of-the-art perceptual learning algorithms, cognitive models of memory encoding and learning, a reasoning module for predicting missing items from the household, and a graphical user interface (GUI) to interact with the user. The architecture is integrated with the Fetch mobile manipulator robot and validated in a large indoor environment with multiple contexts and objects. Our experimental results show that the robot can adapt to an environment by learning contextual knowledge through interactions with its user. The robot can also use the learned knowledge to correctly predict missing items over multiple weeks and it is robust against sensory and perceptual errors.
别忘了买牛奶:情景感知杂货提醒家用机器人
在家庭环境中工作的辅助机器人需要在家里有可用的物品来执行辅助任务。然而,当这些物品用完时,辅助机器人必须提醒它的用户购买缺失的物品。在本文中,我们提出了一种计算架构,可以让机器人通过与用户的交互来学习家庭的个性化上下文知识。然后,该架构可以使用所学到的知识来预测家庭在很长一段时间内丢失的物品。该架构集成了最先进的感知学习算法、记忆编码和学习的认知模型、预测家庭丢失物品的推理模块,以及与用户交互的图形用户界面(GUI)。该架构与Fetch移动机械臂机器人集成,并在具有多个上下文和对象的大型室内环境中进行验证。我们的实验结果表明,机器人可以通过与用户的交互来学习上下文知识,从而适应环境。机器人还可以使用学习到的知识来正确预测数周内丢失的物品,并且它对感官和感知错误具有很强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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