FLAIR: Feeding via Long-horizon AcquIsition of Realistic dishes
Rajat Kumar Jenamani, Priya Sundaresan, Maram Sakr, Tapomayukh, Bhattacharjee, Dorsa Sadigh

TL;DR
FLAIR is a long-horizon robotic feeding system that uses foundation models and a skill library to efficiently and personalized feed realistic meals, demonstrating effectiveness across diverse settings and users.
Contribution
The paper introduces FLAIR, a novel system combining foundation models and a skill library for long-horizon, personalized feeding of realistic meals by robots.
Findings
Effective food pickup from diverse plates
Adheres to user preferences in real-world tests
Successfully feeds a mobility-impaired individual
Abstract
Robot-assisted feeding has the potential to improve the quality of life for individuals with mobility limitations who are unable to feed themselves independently. However, there exists a large gap between the homogeneous, curated plates existing feeding systems can handle, and truly in-the-wild meals. Feeding realistic plates is immensely challenging due to the sheer range of food items that a robot may encounter, each requiring specialized manipulation strategies which must be sequenced over a long horizon to feed an entire meal. An assistive feeding system should not only be able to sequence different strategies efficiently in order to feed an entire meal, but also be mindful of user preferences given the personalized nature of the task. We address this with FLAIR, a system for long-horizon feeding which leverages the commonsense and few-shot reasoning capabilities of foundation…
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Taxonomy
TopicsSmart Agriculture and AI
MethodsLib
