ContRail: Realistic Railway Image Synthesis using ControlNet (2025)

Abstract

Deep learning became an ubiquitous paradigm due to its extraordinary effectiveness and applicability in numerous domains. However, the approach suffers from the high demand for data required to achieve the potential of this type of model. An ever-increasing subfield of Artificial Intelligence, Image Synthesis, aims to address this limitation through the design of intelligent models capable of creating original and realistic images, endeavor which could drastically reduce the need for real data. The Stable Diffusion generation paradigm recently propelled state-of-the-art approaches to exceed all previous benchmarks. In this work, we propose the ContRail framework based on the novel Stable Diffusion model ControlNet, which we empower through a multi-modal conditioning method. We experiment with the task of synthetic railway image generation, where we improve the performance in rail-specific tasks, such as rail semantic segmentation by enriching the dataset with realistic synthetic images.

Citare

@Inproceedings{Alexandrescu2025ContRailRR,
 author = {Andrei-Robert Alexandrescu and Răzvan-Gabriel Petec and Alexandru Manole and Laura Diosan},
 booktitle = {Procedia Computer Science},
 title = {ContRail: Realistic Railway Image Synthesis using ControlNet},
 year = {2025}
}

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