Subgraph Learning for Topological Geolocalization with Graph Neural Networks

Sensors (Basel). 2023 May 26;23(11):5098. doi: 10.3390/s23115098.

Abstract

One of the challenges of spatial cognition, such as self-localization and navigation, is to develop an efficient learning approach capable of mimicking human ability. This paper proposes a novel approach for topological geolocalization on the map using motion trajectory and graph neural networks. Specifically, our learning method learns an embedding of the motion trajectory encoded as a path subgraph where the node and edge represent turning direction and relative distance information by training a graph neural network. We formulate the subgraph learning as a multi-class classification problem in which the output node IDs are interpreted as the object's location on the map. After training using three map datasets with small, medium, and large sizes, the node localization tests on simulated trajectories generated from the map show 93.61%, 95.33%, and 87.50% accuracy, respectively. We also demonstrate similar accuracy for our approach on actual trajectories generated by visual-inertial odometry. The key benefits of our approach are as follows: (1) we take advantage of the powerful graph-modeling ability of neural graph networks, (2) it only requires a map in the form of a 2D graph, and (3) it only requires an affordable sensor that generates relative motion trajectory.

Keywords: geolocalization; graph neural network; map; motion trajectory; subgraph.

MeSH terms

  • Cognition*
  • Humans
  • Learning*
  • Motion
  • Neural Networks, Computer

Grants and funding

This research received no external funding.