Social robots are expected to be a human labor support technology, and one application of them is an advertising medium in public spaces. When social robots provide information, such as recommended shops, adaptive communication according to the user's state is desired. User engagement, which is also defined as the level of interest in the robot, is likely to play an important role in adaptive communication. Therefore, in this paper, we propose a new framework to estimate user engagement. The proposed method focuses on four unsolved open problems: multi-party interactions, process of state change in engagement, difficulty in annotating engagement, and interaction dataset in the real world. The accuracy of the proposed method for estimating engagement was evaluated using interaction duration. The results show that the interaction duration can be accurately estimated by considering the influence of the behaviors of other people; this also implies that the proposed model accurately estimates the level of engagement during interaction with the robot.
翻译:社会机器人预计将是人类劳动力支持技术,其中一项应用是公共空间的广告媒介。当社会机器人提供信息,如推荐商店时,需要根据用户的状态进行适应性通信。用户参与(也定义为对机器人的兴趣水平)很可能在适应性通信中发挥重要作用。因此,我们在本文件中提出了一个新的框架来估计用户参与。拟议方法侧重于四个尚未解决的问题:多党互动、国家参与变化过程、通知参与困难和真实世界的互动数据集。拟议参与评估方法的准确性是通过互动时间来评估的。结果显示,考虑到他人行为的影响,可以准确估计互动时间;这也意味着拟议模型准确估计了与机器人互动期间的参与程度。