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Scaling Local Control to Large-Scale Topological Navigation

Xiangyun Meng, Nathan Ratliff, Xiang Yu, Dieter Fox

Year
2019
Citations
5
Access
Open access

Abstract

Visual topological navigation has been revitalized recently thanks to the advancement of deep learning that substantially improves robot perception. However, the scalability and reliability issue remain challenging due to the complexity and ambiguity of real world images and mechanical constraints of real robots. We present an intuitive solution to show that by accurately measuring the capability of a local controller, large-scale visual topological navigation can be achieved while being scalable and robust. Our approach achieves state-of-the-art results in trajectory following and planning in large-scale environments. It also generalizes well to real robots and new environments without retraining or finetuning.

Keywords

ScalabilityAmbiguityRobotComputer scienceScale (ratio)Artificial intelligenceTrajectoryReliability (semiconductor)Controller (irrigation)Topology (electrical circuits)

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