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Automatically Classifying User Engagement for Dynamic Multi-party Human–Robot Interaction

Mary Ellen Foster, Andre Gaschler, Manuel Giuliani

发表年份
2017
引用次数
61
访问权限
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摘要

A robot agent designed to engage in real-world human-robot joint action must be able to understand the social states of the human users it interacts with in order to behave appropriately. In particular, in a dynamic public space, a crucial task for the robot is to determine the needs and intentions of all of the people in the scene, so that it only interacts with people who intend to interact with it. We address the task of estimating the engagement state of customers for a robot bartender based on the data from audiovisual sensors. We begin with an offline experiment using hidden Markov models, confirming that the sensor data contains the information necessary to estimate user state. We then present two strategies for online state estimation: a rule-based classifier based on observed human behaviour in real bars, and a set of supervised classifiers trained on a labelled corpus. These strategies are compared in offline cross-validation, in an online user study, and through validation against a separate test corpus. These studies show that while the trained classifiers are best in a cross-validation setting, the rule-based classifier performs best with novel data; however, all classi-

关键词

Computer scienceClassifier (UML)Artificial intelligenceRobotMachine learningHuman–robot interactionHidden Markov modelRoboticsRandom subspace methodTest data

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