English

SymboSLAM: Semantic Map Generation in a Multi-Agent System

Artificial Intelligence 2024-03-26 v1 Multiagent Systems

Abstract

Sub-symbolic artificial intelligence methods dominate the fields of environment-type classification and Simultaneous Localisation and Mapping. However, a significant area overlooked within these fields is solution transparency for the human-machine interaction space, as the sub-symbolic methods employed for map generation do not account for the explainability of the solutions generated. This paper proposes a novel approach to environment-type classification through Symbolic Simultaneous Localisation and Mapping, SymboSLAM, to bridge the explainability gap. Our method for environment-type classification observes ontological reasoning used to synthesise the context of an environment through the features found within. We achieve explainability within the model by presenting operators with environment-type classifications overlayed by a semantically labelled occupancy map of landmarks and features. We evaluate SymboSLAM with ground-truth maps of the Canberra region, demonstrating method effectiveness. We assessed the system through both simulations and real-world trials.

Keywords

Cite

@article{arxiv.2403.15504,
  title  = {SymboSLAM: Semantic Map Generation in a Multi-Agent System},
  author = {Brandon Curtis Colelough},
  journal= {arXiv preprint arXiv:2403.15504},
  year   = {2024}
}

Comments

14 pages, 11 figures

R2 v1 2026-06-28T15:30:30.348Z