TL;DR
sumo3Dviz is an open-source, Python-based 3D visualization tool for SUMO traffic simulations, enhancing human-centered analysis with realistic, customizable visual outputs.
Contribution
It introduces a lightweight, scriptable 3D visualization pipeline that converts SUMO outputs into high-quality, reproducible visualizations suitable for diverse applications.
Findings
Supports both external and first-person views
Enables batch video generation for large scenarios
Addresses trajectory smoothing for realistic motion
Abstract
Traffic microsimulation software such as SUMO generate rich spatio-temporal data describing individual vehicle movements, interactions, and support the development of control strategies. While numerical outputs and 2D visualisations are sufficient for many technical analyses, they are often inadequate for applications that require intuitive interpretation, effective communication, or human-centred evaluation. In particular, user studies in mobility psychology, acceptance research, and virtual experience stated-preference experiments require realistic visualisations that reflect how traffic scenarios are perceived from a human perspective. This paper introduces sumo3Dviz, a lightweight, open-source 3D visualisation pipeline for SUMO traffic simulations. It converts standard SUMO simulation outputs, such as vehicle trajectories and signal states, into high-quality 3D renderings using a…
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