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Assessment of adaptive human-robot interactions

机译:评估自适应人机交互

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One of the overarching goals of robotics research is that robots ultimately coexist with people in human societies as an integral part of them. In order to achieve this goal, robots need to be accepted by people as natural partners within the society. It is therefore essential for robots to have adaptive learning mechanisms that can intelligently update a human model for effective human-robot interaction (HRI). This might be critical in interactions with elderly and disabled people in their daily activities. This research has developed and evaluated an intelligent HRI system that enables a mobile robot to learn adaptively about the behaviors and preferences of the people with whom it interacts. Various learning algorithms have been compared and a Bayesian learning mechanism has been implemented by estimating and updating a parameter set that models behaviors and preferences of people. Every time a user interacts with the robot, the model is updated. The robot then uses the model to predict future actions of its user. A variety of HRI modalities including speech recognition, sound source localization, simple natural language understanding, face detection, face recognition, and attention gaining/losing systems, along with a navigation system, have been integrated with the learning system. The integrated system has been successfully implemented on a Pioneer 3-AT mobile robot. The system has also been evaluated using 25 subjects who interacted with the robot using adaptive and non-adaptive interfaces. This study showed that adaptive interaction is preferred over non-adaptive interaction by the participants at a statistically significant level.
机译:机器人技术研究的首要目标之一是,机器人最终与人类社会共存,成为人类社会不可分割的一部分。为了实现这一目标,机器人需要被人们接受为社会中的自然伙伴。因此,对于机器人来说,具有自适应学习机制至关重要,该机制可以智能地更新人类模型,以实现有效的人机交互(HRI)。这对于老年人和残疾人在日常活动中的互动可能至关重要。这项研究已经开发并评估了智能HRI系统,该系统使移动机器人能够自适应地了解与之交互的人的行为和偏好。已经比较了各种学习算法,并且通过估计和更新对人的行为和偏好进行建模的参数集来实现贝叶斯学习机制。每次用户与机器人互动时,都会更新模型。然后,机器人使用该模型预测其用户的未来动作。学习系统已集成了多种HRI模式,包括语音识别,声源定位,简单的自然语言理解,面部检测,面部识别和注意力获得/丧失系统,以及导航系统。该集成系统已在Pioneer 3-AT移动机器人上成功实现。该系统还通过使用自适应和非自适应界面与机器人进行交互的25位受试者进行了评估。这项研究表明,在统计学上有意义的水平上,参与者比非自适应交互更喜欢自适应交互。

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