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  5. Robust Policies via Mid-Level Visual Representations: An Experimental Study in Manipulation and Navigation

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Preprint
en
2020

Robust Policies via Mid-Level Visual Representations: An Experimental Study in Manipulation and Navigation

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0 Files

en
2020
DOI: 10.48550/arxiv.2011.06698arxiv.org/abs/2011.06698

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Jitendra Malik
Jitendra Malik

University of California, Berkeley

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Bryan Chen
Alexander F. Sax
G. Malcolm Lewis
+5 more

Abstract

Vision-based robotics often separates the control loop into one module for perception and a separate module for control. It is possible to train the whole system end-to-end (e.g. with deep RL), but doing it "from scratch" comes with a high sample complexity cost and the final result is often brittle, failing unexpectedly if the test environment differs from that of training. We study the effects of using mid-level visual representations (features learned asynchronously for traditional computer vision objectives), as a generic and easy-to-decode perceptual state in an end-to-end RL framework. Mid-level representations encode invariances about the world, and we show that they aid generalization, improve sample complexity, and lead to a higher final performance. Compared to other approaches for incorporating invariances, such as domain randomization, asynchronously trained mid-level representations scale better: both to harder problems and to larger domain shifts. In practice, this means that mid-level representations could be used to successfully train policies for tasks where domain randomization and learning-from-scratch failed. We report results on both manipulation and navigation tasks, and for navigation include zero-shot sim-to-real experiments on real robots.

How to cite this publication

Bryan Chen, Alexander F. Sax, G. Malcolm Lewis, Iro Armeni, Silvio Savarese, Amir Zamir, Jitendra Malik, Lerrel Pinto (2020). Robust Policies via Mid-Level Visual Representations: An Experimental Study in Manipulation and Navigation. , DOI: https://doi.org/10.48550/arxiv.2011.06698.

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Publication Details

Type

Preprint

Year

2020

Authors

8

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.48550/arxiv.2011.06698

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