Home /Research /Introspection in Learned Semantic Scene Graph Localisation
OTHER

Introspection in Learned Semantic Scene Graph Localisation

Manshika Charvi Bissessur, Efimia Panagiotaki, Daniele De Martini

Year
2025
Access
Open access

Abstract

This work investigates how semantics influence localisation performance and robustness in a learned self-supervised, contrastive semantic localisation framework. After training a localisation network on both original and perturbed maps, we conduct a thorough post-hoc introspection analysis to probe whether the model filters environmental noise and prioritises distinctive landmarks over routine clutter. We validate various interpretability methods and present a comparative reliability analysis. Integrated gradients and Attention Weights consistently emerge as the most reliable probes of learned behaviour. A semantic class ablation further reveals an implicit weighting in which frequent objects are often down-weighted. Overall, the results indicate that the model learns noise-robust, semantically salient relations about place definition, thereby enabling explainable registration under challenging visual and structural variations.

Keywords

cs.LGcs.AIcs.CVcs.RO

Related papers

Browse all OTHER papers