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Autores principales: Tekden, Ahmet E., Erdem, Aykut, Erdem, Erkut, Asfour, Tamim, Ugur, Emre
Formato: Preprint
Publicado: 2021
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Acceso en línea:https://arxiv.org/abs/2102.02100
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author Tekden, Ahmet E.
Erdem, Aykut
Erdem, Erkut
Asfour, Tamim
Ugur, Emre
author_facet Tekden, Ahmet E.
Erdem, Aykut
Erdem, Erkut
Asfour, Tamim
Ugur, Emre
contents Pushing is an essential non-prehensile manipulation skill used for tasks ranging from pre-grasp manipulation to scene rearrangement, reasoning about object relations in the scene, and thus pushing actions have been widely studied in robotics. The effective use of pushing actions often requires an understanding of the dynamics of the manipulated objects and adaptation to the discrepancies between prediction and reality. For this reason, effect prediction and parameter estimation with pushing actions have been heavily investigated in the literature. However, current approaches are limited because they either model systems with a fixed number of objects or use image-based representations whose outputs are not very interpretable and quickly accumulate errors. In this paper, we propose a graph neural network based framework for effect prediction and parameter estimation of pushing actions by modeling object relations based on contacts or articulations. Our framework is validated both in real and simulated environments containing different shaped multi-part objects connected via different types of joints and objects with different masses, and it outperforms image-based representations on physics prediction. Our approach enables the robot to predict and adapt the effect of a pushing action as it observes the scene. It can also be used for tool manipulation with never-seen tools. Further, we demonstrate 6D effect prediction in the lever-up action in the context of robot-based hard-disk disassembly.
format Preprint
id arxiv_https___arxiv_org_abs_2102_02100
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Object and Relation Centric Representations for Push Effect Prediction
Tekden, Ahmet E.
Erdem, Aykut
Erdem, Erkut
Asfour, Tamim
Ugur, Emre
Robotics
Artificial Intelligence
Machine Learning
Pushing is an essential non-prehensile manipulation skill used for tasks ranging from pre-grasp manipulation to scene rearrangement, reasoning about object relations in the scene, and thus pushing actions have been widely studied in robotics. The effective use of pushing actions often requires an understanding of the dynamics of the manipulated objects and adaptation to the discrepancies between prediction and reality. For this reason, effect prediction and parameter estimation with pushing actions have been heavily investigated in the literature. However, current approaches are limited because they either model systems with a fixed number of objects or use image-based representations whose outputs are not very interpretable and quickly accumulate errors. In this paper, we propose a graph neural network based framework for effect prediction and parameter estimation of pushing actions by modeling object relations based on contacts or articulations. Our framework is validated both in real and simulated environments containing different shaped multi-part objects connected via different types of joints and objects with different masses, and it outperforms image-based representations on physics prediction. Our approach enables the robot to predict and adapt the effect of a pushing action as it observes the scene. It can also be used for tool manipulation with never-seen tools. Further, we demonstrate 6D effect prediction in the lever-up action in the context of robot-based hard-disk disassembly.
title Object and Relation Centric Representations for Push Effect Prediction
topic Robotics
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2102.02100