Self-supervised free space estimation in outdoor terrain

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Cambridge University Press

Abstract

The ability to reliably estimate free space is an essential requirement for efficient and safe robot navigation. This paper presents a novel system, built upon a stochastic framework, which estimates free space quickly from stereo data, using self-supervised learning. The system relies on geometric data in the close range of the robot to train a second-stage appearance-based classifier for long range areas in a scene. Experiments are conducted on board an unmanned ground vehicle, and the results demonstrate the advantages of the proposed technique over other self-supervised systems. Copyright © Cambridge University Press 2018.

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Free space estimation, Outdoor terrain, Self-supervised learning, Stereo data, Stochastic systems, Supervised learning, Appearance based, Free spaces, Geometric data, Stochastic framework, Supervised systems, Unmanned ground vehicles, Robots

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