# SIGMUS: Semantic Integration for Knowledge Graphs in Multimodal Urban Spaces

**Authors:** Brian Wang, Mani Srivastava

arXiv: 2509.00287 · 2026-02-18

## TL;DR

SIGMUS leverages Large Language Models to automatically integrate multimodal urban sensor data into knowledge graphs, enhancing incident understanding without relying on human-crafted rules.

## Contribution

The paper introduces SIGMUS, a system that uses LLMs for semantic integration of diverse urban sensor data into knowledge graphs, automating incident analysis.

## Key findings

- Successfully connects 5 different data sources to incidents
- Organizes multimodal evidence into a comprehensive knowledge graph
- Demonstrates reasonable incident-data relationships in urban environments

## Abstract

Modern urban spaces are equipped with an increasingly diverse set of sensors, all producing an abundance of multimodal data. Such multimodal data can be used to identify and reason about important incidents occurring in urban landscapes, such as major emergencies, cultural and social events, as well as natural disasters. However, such data may be fragmented over several sources and difficult to integrate due to the reliance on human-driven reasoning for identifying relationships between the multimodal data corresponding to an incident, as well as understanding the different components which define an incident. Such relationships and components are critical to identifying the causes of such incidents, as well as producing forecasting the scale and intensity of future incidents as they begin to develop. In this work, we create SIGMUS, a system for Semantic Integration for Knowledge Graphs in Multimodal Urban Spaces. SIGMUS uses Large Language Models (LLMs) to produce the necessary world knowledge for identifying relationships between incidents occurring in urban spaces and data from different modalities, allowing us to organize evidence and observations relevant to an incident without relying and human-encoded rules for relating multimodal sensory data with incidents. This organized knowledge is represented as a knowledge graph, organizing incidents, observations, and much more. We find that our system is able to produce reasonable connections between 5 different data sources (new article text, CCTV images, air quality, weather, and traffic measurements) and relevant incidents occurring at the same time and location.

## Full text

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## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/2509.00287/full.md

## References

50 references — full list in the complete paper: https://tomesphere.com/paper/2509.00287/full.md

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Source: https://tomesphere.com/paper/2509.00287