Robot-assisted feeding in household environments is challenging because it requires robots to generate trajectories that effectively bring food items of varying shapes and sizes into the mouth while making sure the user is comfortable. Our key insight is that in order to solve this challenge, robots must balance the efficiency of feeding a food item with the comfort of each individual bite. We formalize comfort and efficiency as heuristics to incorporate in motion planning. We present an approach based on heuristics-guided bi-directional Rapidly-exploring Random Trees (h-BiRRT) that selects bite transfer trajectories of arbitrary food item geometries and shapes using our developed bite efficiency and comfort heuristics and a learned constraint model. Real-robot evaluations show that optimizing both comfort and efficiency significantly outperforms a fixed-pose based method, and users preferred our method significantly more than that of a method that maximizes only user comfort. Videos and Appendices are found on our website: https://sites.google.com/view/comfortbitetransfer-icra22/home.
翻译:家庭环境中的机器人辅助喂食具有挑战性,因为它要求机器人产生轨道,有效地将不同形状和大小的食物物品带入嘴部,同时确保用户感到舒适。我们的关键见解是,为了解决这一挑战,机器人必须平衡喂食食物物品的效率与每个咬人的舒适。我们把舒适和效率作为超自然学纳入运动规划中,我们提出一种基于超自然引导双向快速探索随机树(h-BirRT)的方法,该方法利用我们开发的咬口效率和舒适超自然食物物品的杂质和形状来选择咬取转移的轨迹和形状。 Real-robot评价显示,优化舒适和效率大大超越了固定用途法,用户更倾向于我们的方法,而不是一种仅使用户舒适最大化的方法。我们的网站有:https://sites.google.com/view/comfortitetraction-icra22/home。