We develop data-driven models to predict when a robot should feed during social dining scenarios. Being able to eat independently with friends and family is considered one of the most memorable and important activities for people with mobility limitations. While existing robotic systems for feeding people with mobility limitations focus on solitary dining, commensality, the act of eating together, is often the practice of choice. Sharing meals with others introduces the problem of socially appropriate bite timing for a robot, i.e. the appropriate timing for the robot to feed without disrupting the social dynamics of a shared meal. Our key insight is that bite timing strategies that take into account the delicate balance of social cues can lead to seamless interactions during robot-assisted feeding in a social dining scenario. We approach this problem by collecting a Human-Human Commensality Dataset (HHCD) containing 30 groups of three people eating together. We use this dataset to analyze human-human commensality behaviors and develop bite timing prediction models in social dining scenarios. We also transfer these models to human-robot commensality scenarios. Our user studies show that prediction improves when our algorithm uses multimodal social signaling cues between diners to model bite timing. The HHCD dataset, videos of user studies, and code are available at https://emprise.cs.cornell.edu/hrcom/
翻译:我们开发了数据驱动模型,以预测机器人在社交餐饮情景中何时应该进食。 能够与朋友和家人独立吃饭被认为是流动受限者最难忘和最重要的活动之一。 现有的流动受限者喂养的机器人系统往往侧重于单独餐饮、共餐、共餐行为,这往往是一种选择做法。 与他人共享膳食会引入机器人在社会上适合的咬咬时间的问题,即机器人在不干扰共享膳食的社会动态的情况下喂食。 我们的关键洞察力是,考虑到社会提示微妙平衡的咬定时间战略可以导致在社会餐饮情景中机器人辅助喂养期间的无缝互动。 我们通过收集包含30个组三人共食的人类-人类共餐数据集(HHCD)来解决这一问题。 我们使用该数据集分析人类共餐行为,并在社会餐饮情景中开发咬定时间预测模型。 我们还将这些模型传输给人类-robot共餐。 我们的用户研究表明,当我们的算算法使用现代社会信号时,我们用H型的用户/Sedirmeximes 来改进了H型服务器/eximc。