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Lifelong Topological Visual Navigation

Rey Reza Wiyatno, Anqi Xu, Liam Paull

2022IEEE Robotics and Automation Letters15 citationsDOI

Abstract

Commonly, learning-based topological navigation approaches produce a local policy while preserving some loose connectivity of the space through a topological map. Nevertheless, spurious or missing edges in the topological graph often lead to navigation failure. In this work, we propose a sampling-based graph building method, which results in sparser graphs yet with higher navigation performance compared to baseline methods. We also propose graph maintenance strategies that eliminate spurious edges and expand the graph as needed, which improves lifelong navigation performance. Unlike controllers that learn from fixed training environments, we show that our model can be fine-tuned using only a small number of collected trajectory images from a real-world environment where the agent is deployed. We demonstrate successful navigation after fine-tuning on real-world environments, and notably show significant navigation improvements over time by applying our lifelong graph maintenance strategies.

Topics & Concepts

Spurious relationshipComputer scienceGraphTopological graphTopological mapTopology (electrical circuits)Artificial intelligenceReal-time computingComputer visionTheoretical computer scienceMachine learningMathematicsRobotMobile robotCombinatoricsRobotics and Sensor-Based LocalizationRobotic Path Planning AlgorithmsAdvanced Image and Video Retrieval Techniques
Lifelong Topological Visual Navigation | Litcius