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Autori principali: Xu, Yiqing, Mao, Jiayuan, Du, Yilun, Lozáno-Pérez, Tomas, Kaelbling, Leslie Pack, Hsu, David
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.11928
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author Xu, Yiqing
Mao, Jiayuan
Du, Yilun
Lozáno-Pérez, Tomas
Kaelbling, Leslie Pack
Hsu, David
author_facet Xu, Yiqing
Mao, Jiayuan
Du, Yilun
Lozáno-Pérez, Tomas
Kaelbling, Leslie Pack
Hsu, David
contents This paper studies the challenge of developing robots capable of understanding under-specified instructions for creating functional object arrangements, such as "set up a dining table for two"; previous arrangement approaches have focused on much more explicit instructions, such as "put object A on the table." We introduce a framework, SetItUp, for learning to interpret under-specified instructions. SetItUp takes a small number of training examples and a human-crafted program sketch to uncover arrangement rules for specific scene types. By leveraging an intermediate graph-like representation of abstract spatial relationships among objects, SetItUp decomposes the arrangement problem into two subproblems: i) learning the arrangement patterns from limited data and ii) grounding these abstract relationships into object poses. SetItUp leverages large language models (LLMs) to propose the abstract spatial relationships among objects in novel scenes as the constraints to be satisfied; then, it composes a library of diffusion models associated with these abstract relationships to find object poses that satisfy the constraints. We validate our framework on a dataset comprising study desks, dining tables, and coffee tables, with the results showing superior performance in generating physically plausible, functional, and aesthetically pleasing object arrangements compared to existing models.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11928
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "Set It Up!": Functional Object Arrangement with Compositional Generative Models
Xu, Yiqing
Mao, Jiayuan
Du, Yilun
Lozáno-Pérez, Tomas
Kaelbling, Leslie Pack
Hsu, David
Robotics
Artificial Intelligence
This paper studies the challenge of developing robots capable of understanding under-specified instructions for creating functional object arrangements, such as "set up a dining table for two"; previous arrangement approaches have focused on much more explicit instructions, such as "put object A on the table." We introduce a framework, SetItUp, for learning to interpret under-specified instructions. SetItUp takes a small number of training examples and a human-crafted program sketch to uncover arrangement rules for specific scene types. By leveraging an intermediate graph-like representation of abstract spatial relationships among objects, SetItUp decomposes the arrangement problem into two subproblems: i) learning the arrangement patterns from limited data and ii) grounding these abstract relationships into object poses. SetItUp leverages large language models (LLMs) to propose the abstract spatial relationships among objects in novel scenes as the constraints to be satisfied; then, it composes a library of diffusion models associated with these abstract relationships to find object poses that satisfy the constraints. We validate our framework on a dataset comprising study desks, dining tables, and coffee tables, with the results showing superior performance in generating physically plausible, functional, and aesthetically pleasing object arrangements compared to existing models.
title "Set It Up!": Functional Object Arrangement with Compositional Generative Models
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2405.11928