Stephen Pendergast’s Post

View profile for Stephen Pendergast, graphic

Systems Engineering Consulting of Complex Radar, Sonar, Navigation and Satellite Comm Systems

The authors developed a low cost system for detecting and classifying consumer drones. Abstract The proliferation of #drones, or unmanned aerial vehicles (#UAVs), has raised significant safety concerns due to their potential misuse in activities such as espionage, smuggling, and infrastructure disruption. This paper addresses the critical need for effective drone detection and classification systems that operate independently of UAV cooperation. We evaluate various convolutional neural networks (#CNNs) for their ability to detect and classify drones using spectrogram data derived from consecutive Fourier transforms of signal components. The focus is on model robustness in low signal-to-noise ratio (SNR) environments, which is critical for real-world applications. A comprehensive dataset is provided to support future model development. In addition, we demonstrate a low-cost drone detection system using a standard computer, software-defined radio (SDR) and antenna, validated through real-world field testing. On our development dataset, all models consistently achieved an average balanced classification accuracy of >= 85% at SNR > -12dB. In the field test, these models achieved an average balance accuracy of > 80%, depending on transmitter distance and antenna direction. Our contributions include: a publicly available dataset for model development, a comparative analysis of CNN for drone detection under low SNR conditions, and the deployment and field evaluation of a practical, low-cost detection system.

Robust Consumer Drone RF Link Detection and Classification in Low SNR Environments

Robust Consumer Drone RF Link Detection and Classification in Low SNR Environments

spenderaedsystems.blogspot.com

STEVEN BADER

Chief Executive Officer at US Government Agencies

4mo

Good to know!

Like
Reply

To view or add a comment, sign in

Explore topics