SynDroneVision: A Synthetic Dataset for Image-Based Drone Detection
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 cos...
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Zusammenfassung: | 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. |
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DOI: | 10.48550/arxiv.2411.05633 |