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. Robots can potentially help with this activity but robot-assisted feeding is a multi-faceted problem with challenges in bite acquisition, bite timing, and bite transfer. Bite timing in particular becomes uniquely challenging in social dining scenarios due to the possibility of interrupting a social human-robot group interaction during commensality. 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 multimodal 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 will be publicly released after acceptance.
翻译:我们开发了数据驱动模型,以预测机器人在社交用餐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移动性受限者最难忘和最重要的活动之一。机器人有可能帮助开展这一活动,但机器人辅助喂养是一个多方面的问题,在咬伤获取、咬牙时间和咬咬转移方面存在挑战。在社交用餐情景中,由于在社交用餐情景中可能干扰社会人类-机器人群体互动,咬伤时间特别变得特别具有挑战性。我们的关键洞察力是,考虑到社会提示微妙平衡的咬断时间战略可以导致机器人辅助喂养期间在社交用餐情景中进行无缝互动。我们通过收集包含30个三组人共同进餐的人类-人类共融数据集(HHCHCD)来解决这一问题。我们使用这一数据集分析人类-人类的共融和行为,并在社交用餐情景中开发咬断时间预测模型。我们还将这些模型转移到人类-机器人共融度假设中。我们的用户研究表明,当我们的算法使用自动社会信号时,当我们使用餐室之间使用自动信号时,在用户接受后,HCD数据将改进。