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Learning Neural Implicit Functions as Object Representations for Robotic Manipulation

2021-12-09 10:14:13
Jung-Su Ha, Danny Driess, Marc Toussaint

Abstract

Robotic manipulation planning is the problem of finding a sequence of robot configurations that involves interactions with objects in the scene, e.g., grasp, placement, tool-use, etc. To achieve such interactions, traditional approaches require hand-designed features and object representations, and it still remains an open question how to describe such interactions with arbitrary objects in a flexible and efficient way. Inspired by recent advances in 3D modeling, e.g. NeRF, we propose a method to represent objects as neural implicit functions upon which we can define and jointly train interaction constraint functions. The proposed pixel-aligned representation is directly inferred from camera images with known camera geometry, naturally acting as a perception component in the whole manipulation pipeline, while at the same time enabling sequential robot manipulation planning.

Abstract (translated)

URL

https://arxiv.org/abs/2112.04812

PDF

https://arxiv.org/pdf/2112.04812.pdf


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