Explainable, automated urban interventions to improve pedestrian and vehicle safety
Cristina Bustos, Daniel Rhoads, Albert Sole-Ribalta, David Masip, Alex, Arenas, Agata Lapedriza, Javier Borge-Holthoefer

TL;DR
This paper presents an automated computational framework using computer vision to generate hazard maps and suggest urban interventions that enhance pedestrian and vehicle safety in cities.
Contribution
It introduces a novel, scalable pipeline combining deep learning and interpretability techniques to assess and improve urban safety for pedestrians and vehicles.
Findings
Generated fine-grained hazard maps for urban areas
Identified potential interventions to improve safety
Demonstrated applicability across different cities
Abstract
At the moment, urban mobility research and governmental initiatives are mostly focused on motor-related issues, e.g. the problems of congestion and pollution. And yet, we can not disregard the most vulnerable elements in the urban landscape: pedestrians, exposed to higher risks than other road users. Indeed, safe, accessible, and sustainable transport systems in cities are a core target of the UN's 2030 Agenda. Thus, there is an opportunity to apply advanced computational tools to the problem of traffic safety, in regards especially to pedestrians, who have been often overlooked in the past. This paper combines public data sources, large-scale street imagery and computer vision techniques to approach pedestrian and vehicle safety with an automated, relatively simple, and universally-applicable data-processing scheme. The steps involved in this pipeline include the adaptation and…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Automated Road and Building Extraction · Remote Sensing and LiDAR Applications
