DS1 spectrogram: SynDroneVision: A Synthetic Dataset for Image-Based Drone Detection

SynDroneVision: A Synthetic Dataset for Image-Based Drone Detection

November 8, 20242411.05633

Authors

Tamara R. Lenhard,Andreas Weinmann,Kai Franke,Tobias Koch

Abstract

Developing robust drone detection systems is often constrained by the limited availability of large-scale annotated training data and the high costs associated with real-world data collection. However, leveraging synthetic data generated via game engine-based simulations provides a promising and cost-effective solution to overcome this issue.

Therefore, we present SynDroneVision, a synthetic dataset specifically designed for RGB-based drone detection in surveillance applications. Featuring diverse backgrounds, lighting conditions, and drone models, SynDroneVision offers a comprehensive training foundation for deep learning algorithms.

To evaluate the dataset's effectiveness, we perform a comparative analysis across a selection of recent YOLO detection models. Our findings demonstrate that SynDroneVision is a valuable resource for real-world data enrichment, achieving notable enhancements in model performance and robustness, while significantly reducing the time and costs of real-world data acquisition.

SynDroneVision will be publicly released upon paper acceptance.

Resources

Stay in the loop

Get tldr.takara.ai to Your Email, Everyday.

tldr.takara.aiHome·Daily at 6am UTC·© 2026 takara.ai Ltd

Content is sourced from third-party publications.