Generative AI for Visualizing Highway Construction Hazards Through Synthetic Images and Temporal Sequences
Trevor Neece, Mason Smetana, Lev Khazanovich

TL;DR
This paper presents a novel generative AI approach to create synthetic hazard images and sequences for highway construction safety training, overcoming ethical barriers of real hazard depiction.
Contribution
It introduces two modes for hazard visualization from injury reports and develops a multi-dimensional evaluation framework for synthetic hazard imagery.
Findings
Single-pass images achieved 81.1% educational acceptability.
Temporal sequences achieved 60.9% acceptability with lower fidelity.
Both modes produced images with significant retrieval capabilities.
Abstract
Highway construction workers face a high risk of serious injury or death. Image-based training materials depicting hazardous scenarios are essential for engaging safety instruction but remain scarce due to ethical and logistical barriers. This study develops and evaluates a generative AI methodology for producing synthetic visualizations of highway construction hazards from OSHA Severe Injury Report narratives. Two modes were developed: a single-pass approach yielding one image per incident, and a temporal approach producing a four-stage sequence. A sample of 75 incident records yielded 750 images, evaluated using CLIP-based semantic retrieval and expert assessment across dimensions such as educational utility, fidelity, and alignment. Single-pass images achieved 81.1% educational acceptability with fidelity and alignment scores of 4.14/5 and 4.07/5, respectively, while temporal…
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