CenterArt: Joint Shape Reconstruction and 6-DoF Grasp Estimation of Articulated Objects

Published: 24 Apr 2024, Last Modified: 16 May 2024ICRA 2024 Workshop on 3D Visual Representations for Robot ManipulationEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Shape Reconstruction, Grasp Pose Estimation, Articulated Objects
TL;DR: A vision-based approach for simultaneous 3D shape reconstruction and 6-DoF grasp estimation of articulated objects
Abstract: Precisely grasping and reconstructing articulated objects is key to enabling general robotic manipulation. In this paper, we propose CenterArt, a novel approach for simultaneous 3D shape reconstruction and 6-DoF grasp estimation of articulated objects. CenterArt takes RGB-D images of the scene as input and first predicts the shape and joint codes through an encoder. The decoder then leverages these codes to reconstruct 3D shapes and estimate 6-DoF grasp poses of the objects. We further develop a mechanism for generating a dataset of 6-DoF grasp ground truth poses for articulated objects. CenterArt is trained on realistic scenes containing multiple articulated objects with randomized designs, textures, lighting conditions, and realistic depths. We perform extensive experiments demonstrating that CenterArt outperforms existing methods in accuracy and robustness.
Submission Number: 17
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