Towards socially adaptive robots: A novel method for real time recognition of human-robot interaction styles

D. François, D. Polani, K. Dautenhahn
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引用次数: 21

Abstract

Automatically detecting different styles of play in human-robot interaction is a key challenge towards adaptive robots, i.e. robots that are able to regulate the interactions and adapt to different interaction styles of the robot users. In this paper we present a novel algorithm for pattern recognition in human-robot interaction, the cascaded information bottleneck method. We apply it to real-time autonomous recognition of human-robot interaction styles. This method uses an information theoretic approach and enables to progressively extract relevant information from time series. It relies on a cascade of bottlenecks, the bottlenecks being trained one after the other according to the existing agglomerative information bottleneck algorithm. We show that a structure for the bottleneck states along the cascade emerges and we introduce a measure to extrapolate unseen data. We apply this method to real-time recognition of human-robot interaction styles by a robot in a detailed case study. The algorithm has been implemented for real interactions between humans and a real robot. We demonstrate that the algorithm, which is designed to operate real time, is capable of classifying interaction styles, with a good accuracy and a very acceptable delay. Our future work will evaluate this method in scenarios on robot-assisted therapy for children with autism.
面向社会适应机器人:一种实时识别人机交互风格的新方法
自动检测人机交互中的不同游戏风格是自适应机器人面临的一个关键挑战,即机器人能够调节交互并适应机器人用户的不同交互风格。本文提出了一种新的人机交互模式识别算法——级联信息瓶颈法。我们将其应用于人机交互风格的实时自主识别。该方法采用信息论方法,能够从时间序列中逐步提取相关信息。它依赖于瓶颈级联,根据现有的聚合信息瓶颈算法逐个训练瓶颈。我们展示了沿级联出现的瓶颈状态的结构,并引入了一种外推未知数据的方法。在一个详细的案例研究中,我们将该方法应用于机器人对人机交互风格的实时识别。该算法已用于人与机器人之间的真实交互。我们证明了该算法能够实时操作,能够对交互风格进行分类,具有良好的准确性和非常可接受的延迟。我们未来的工作将在自闭症儿童的机器人辅助治疗方案中评估这种方法。
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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