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SORNet: Spatial Object-Centric Representations for Sequential Manipulation

2021-09-08 19:36:29
Wentao Yuan, Chris Paxton, Karthik Desingh, Dieter Fox

Abstract

Sequential manipulation tasks require a robot to perceive the state of an environment and plan a sequence of actions leading to a desired goal state, where the ability to reason about spatial relationships among object entities from raw sensor inputs is crucial. Prior works relying on explicit state estimation or end-to-end learning struggle with novel objects. In this work, we propose SORNet (Spatial Object-Centric Representation Network), which extracts object-centric representations from RGB images conditioned on canonical views of the objects of interest. We show that the object embeddings learned by SORNet generalize zero-shot to unseen object entities on three spatial reasoning tasks: spatial relationship classification, skill precondition classification and relative direction regression, significantly outperforming baselines. Further, we present real-world robotic experiments demonstrating the usage of the learned object embeddings in task planning for sequential manipulation.

Abstract (translated)

URL

https://arxiv.org/abs/2109.03891

PDF

https://arxiv.org/pdf/2109.03891.pdf


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