Home /Research /Topological Navigation Graph Framework
PERCEPTION

Topological Navigation Graph Framework

Povilas Daniusis, Shubham Juneja, Lukas Valatka, Linas Petkevicius

Year
2019
Access
Open access

Abstract

We focus on the utilisation of reactive trajectory imitation controllers for goal-directed mobile robot navigation. We propose a topological navigation graph (TNG) - an imitation-learning-based framework for navigating through environments with intersecting trajectories. The TNG framework represents the environment as a directed graph composed of deep neural networks. Each vertex of the graph corresponds to a trajectory and is represented by a trajectory identification classifier and a trajectory imitation controller. For trajectory following, we propose the novel use of neural object detection architectures. The edges of TNG correspond to intersections between trajectories and are all represented by a classifier. We provide empirical evaluation of the proposed navigation framework and its components in simulated and real-world environments, demonstrating that TNG allows us to utilise non-goal-directed, imitation-learning methods for goal-directed autonomous navigation.

Keywords

cs.ROcs.AIcs.CV

Related papers

Browse all PERCEPTION papers