Deploying a Deep Learning Agent for HRI with Potential "end-users" at Multiple Sheltered Housing Sites

M. Romeo, Daniel Hernández García, Ray B. Jones, A. Cangelosi
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引用次数: 8

Abstract

With the global population aging at an alarming rate, the need to find alternative ways to deliver quality assistance is becoming a pressing concern for health and care systems. To promptly provide companion-like assistance, robots need to gain social intelligence in an autonomous way, without relying on human operators. The work described in this paper aims to develop a deep learning agent that, by means of convolutional neural network architecture in the decision making loop, could understand when and how, to interact with one, or more people, gathered in a room. This was done by training a robot to assess the level of user engagement at the initiation of the interaction, so that the robot could detect the person most willing to start interacting. The robot's performance as a deep learning agent was tested through an experiment with potential ''end-users'', following an iterative process, over four days. The deep learning agent was able to take the right decision 59% of the times by the end of the experiment, from an initial success rate of 44% on the first day, proving the potential of such technologies in this application field.
在多个庇护住房站点为潜在的“最终用户”部署深度学习代理
随着全球人口以惊人的速度老龄化,需要找到提供高质量援助的替代方法,这正成为卫生和保健系统的一个紧迫问题。为了及时提供同伴般的帮助,机器人需要以自主的方式获得社会智能,而不依赖于人类操作员。本文所描述的工作旨在开发一种深度学习代理,该代理通过决策循环中的卷积神经网络架构,可以了解何时以及如何与聚集在房间中的一个或多个人进行交互。这是通过训练机器人在交互开始时评估用户参与程度来完成的,这样机器人就可以检测出最愿意开始交互的人。机器人作为深度学习代理的表现通过与潜在“最终用户”的实验进行了测试,经过一个迭代过程,持续了四天。实验结束时,深度学习智能体的正确决策率为59%,而第一天的初始成功率为44%,这证明了此类技术在该应用领域的潜力。
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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