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Rearrangement: A Challenge for Embodied AI

Authors :
Batra, Dhruv
Chang, Angel X.
Chernova, Sonia
Davison, Andrew J.
Deng, Jia
Koltun, Vladlen
Levine, Sergey
Malik, Jitendra
Mordatch, Igor
Mottaghi, Roozbeh
Savva, Manolis
Su, Hao
Publication Year :
2020

Abstract

We describe a framework for research and evaluation in Embodied AI. Our proposal is based on a canonical task: Rearrangement. A standard task can focus the development of new techniques and serve as a source of trained models that can be transferred to other settings. In the rearrangement task, the goal is to bring a given physical environment into a specified state. The goal state can be specified by object poses, by images, by a description in language, or by letting the agent experience the environment in the goal state. We characterize rearrangement scenarios along different axes and describe metrics for benchmarking rearrangement performance. To facilitate research and exploration, we present experimental testbeds of rearrangement scenarios in four different simulation environments. We anticipate that other datasets will be released and new simulation platforms will be built to support training of rearrangement agents and their deployment on physical systems.<br />Comment: Authors are listed in alphabetical order

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2011.01975
Document Type :
Working Paper