学习双手舀取食物的策略

J. Grannen, Yilin Wu, Suneel Belkhale, Dorsa Sadigh
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引用次数: 7

摘要

机器人喂食系统必须能够获取各种食物。例如,当获得一组豌豆时,串可能会滑倒豌豆,而没有障碍的舀可能会导致追逐盘子上的豌豆。为了获得具有如此多样化特性的食物,我们建议在舀食物时使用第二只手臂来稳定食物,例如,通过将豌豆推到具有平坦表面的勺子上以防止分散。增加的稳定臂可能会带来新的挑战。至关重要的是,这个手臂应该在不干扰获取运动的情况下稳定食物场景,这对于像豆腐这样易碎的高风险食物来说尤其困难。这些高风险食物在舀食物时可能会在勺子和勺子之间断裂,导致食物垃圾从勺子里掉出来。我们提出了一个通用的双手舀原语和一个自适应稳定策略,能够成功地获取多种食物的几何形状和物理特性。我们的方法,碳水化合物:反应性双手舀取的协调获取,通过识别高风险食物和使用闭环视觉反馈稳健地舀取它们,学会在不妨碍任务进度的情况下稳定下来。我们发现碳水化合物能够概括食物的形状、大小和可变形性,并且能够同时操纵多种食物。碳水化合物在舀硬食物上的成功率为87.0%,比单臂基线高出25.8%,与分析基线相比,减少了16.2%的食物破损。视频可以在https://sites.google.com/view/bimanualscoop-corl22/home上找到。
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Learning Bimanual Scooping Policies for Food Acquisition
A robotic feeding system must be able to acquire a variety of foods. Prior bite acquisition works consider single-arm spoon scooping or fork skewering, which do not generalize to foods with complex geometries and deformabilities. For example, when acquiring a group of peas, skewering could smoosh the peas while scooping without a barrier could result in chasing the peas on the plate. In order to acquire foods with such diverse properties, we propose stabilizing food items during scooping using a second arm, for example, by pushing peas against the spoon with a flat surface to prevent dispersion. The added stabilizing arm can lead to new challenges. Critically, this arm should stabilize the food scene without interfering with the acquisition motion, which is especially difficult for easily breakable high-risk food items like tofu. These high-risk foods can break between the pusher and spoon during scooping, which can lead to food waste falling out of the spoon. We propose a general bimanual scooping primitive and an adaptive stabilization strategy that enables successful acquisition of a diverse set of food geometries and physical properties. Our approach, CARBS: Coordinated Acquisition with Reactive Bimanual Scooping, learns to stabilize without impeding task progress by identifying high-risk foods and robustly scooping them using closed-loop visual feedback. We find that CARBS is able to generalize across food shape, size, and deformability and is additionally able to manipulate multiple food items simultaneously. CARBS achieves 87.0% success on scooping rigid foods, which is 25.8% more successful than a single-arm baseline, and reduces food breakage by 16.2% compared to an analytical baseline. Videos can be found at https://sites.google.com/view/bimanualscoop-corl22/home .
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