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A Human-Robot Cooperative Learning System for Easy Installation of Assistant Robots in New Working Environments

机译:在新的工作环境中轻松安装辅助机器人的人机协作学习系统

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摘要

One of the applications of service robots with a greater social impact is the assistance to elderly or disabled people. In these applications, assistant robots must robustly navigate in structured indoor environments such as hospitals, nursing homes or houses, heading from room to room to carry out different nursing or service tasks. Among the main requirements of these robotic aids, one that will determine its future commercial feasibility, is the easy installation of the robot in new working domains without long, tedious or complex configuration steps. This paper describes the navigation system of the assistant robot called SIRA, developed in the Electronics Department of the University of Alcala, focusing on the learning module, specially designed to make the installation of the robot easier and faster in new environments. To cope with robustness and reliability requirements, the navigation system uses probabilistic reasoning (POMDPs) to globally localize the robot and to direct its goal-oriented actions. The proposed learning module fast learns the Markov model of a new environment by means of an exploration stage that takes advantage of human-robot interfaces (basically speech) and user-robot cooperation to accelerate model acquisition. The proposed learning method, based on a modification of the EM algorithm, is able to robustly explore new environments with a low number of corridor traversals, as shown in some experiments carried out with SIRA.
机译:具有更大社会影响力的服务机器人的应用之一是对老年人或残疾人的帮助。在这些应用中,辅助机器人必须在结构化的室内环境(如医院,疗养院或房屋)中稳健地导航,从一个房间到另一个房间,以执行不同的护理或服务任务。这些机器人辅助设备的主要要求中的一项(将决定其未来的商业可行性)是在新的工作区域中轻松安装机器人,而无需花费冗长,繁琐或复杂的配置步骤。本文介绍了由Alcala大学电子系开发的名为SIRA的辅助机器人的导航系统,重点介绍了学习模块,该模块专门设计用于使机器人在新环境中的安装更加轻松快捷。为了满足鲁棒性和可靠性要求,导航系统使用概率推理(POMDP)来对机器人进行全局定位并指导其面向目标的动作。所提出的学习模块通过探索阶段快速学习新环境的马尔可夫模型,该探索阶段利用人机界面(基本上是语音)和用户机合作来加速模型获取。所提出的学习方法基于对EM算法的修改,能够以较少的通道遍历数稳健地探索新环境,如使用SIRA进行的一些实验所示。

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