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Main Authors: Zhang, Ceng, Meng, Xin, Qi, Dongchen, Chirikjian, Gregory S.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.19369
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author Zhang, Ceng
Meng, Xin
Qi, Dongchen
Chirikjian, Gregory S.
author_facet Zhang, Ceng
Meng, Xin
Qi, Dongchen
Chirikjian, Gregory S.
contents This paper introduces an automatic affordance reasoning paradigm tailored to minimal semantic inputs, addressing the critical challenges of classifying and manipulating unseen classes of objects in household settings. Inspired by human cognitive processes, our method integrates generative language models and physics-based simulators to foster analytical thinking and creative imagination of novel affordances. Structured with a tripartite framework consisting of analysis, imagination, and evaluation, our system "analyzes" the requested affordance names into interaction-based definitions, "imagines" the virtual scenarios, and "evaluates" the object affordance. If an object is recognized as possessing the requested affordance, our method also predicts the optimal pose for such functionality, and how a potential user can interact with it. Tuned on only a few synthetic examples across 3 affordance classes, our pipeline achieves a very high success rate on affordance classification and functional pose prediction of 8 classes of novel objects, outperforming learning-based baselines. Validation through real robot manipulating experiments demonstrates the practical applicability of the imagined user interaction, showcasing the system's ability to independently conceptualize unseen affordances and interact with new objects and scenarios in everyday settings.
format Preprint
id arxiv_https___arxiv_org_abs_2403_19369
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RAIL: Robot Affordance Imagination with Large Language Models
Zhang, Ceng
Meng, Xin
Qi, Dongchen
Chirikjian, Gregory S.
Robotics
This paper introduces an automatic affordance reasoning paradigm tailored to minimal semantic inputs, addressing the critical challenges of classifying and manipulating unseen classes of objects in household settings. Inspired by human cognitive processes, our method integrates generative language models and physics-based simulators to foster analytical thinking and creative imagination of novel affordances. Structured with a tripartite framework consisting of analysis, imagination, and evaluation, our system "analyzes" the requested affordance names into interaction-based definitions, "imagines" the virtual scenarios, and "evaluates" the object affordance. If an object is recognized as possessing the requested affordance, our method also predicts the optimal pose for such functionality, and how a potential user can interact with it. Tuned on only a few synthetic examples across 3 affordance classes, our pipeline achieves a very high success rate on affordance classification and functional pose prediction of 8 classes of novel objects, outperforming learning-based baselines. Validation through real robot manipulating experiments demonstrates the practical applicability of the imagined user interaction, showcasing the system's ability to independently conceptualize unseen affordances and interact with new objects and scenarios in everyday settings.
title RAIL: Robot Affordance Imagination with Large Language Models
topic Robotics
url https://arxiv.org/abs/2403.19369