The widespread availability of consumer drones has introduced new challenges related to safety, security, and privacy, as these platforms are increasingly misused in sensitive or restricted areas., existing counter-drone technologies–such as radar, optical tracking, and multi-sensor fusion–offer reliable performance but are often prohibitively expensive and impractical for large-scale civilian deployment. This work presents a low-cost framework for real-time drone detection and classification that leverages the radio frequency (RF) emissions exchanged between drones and their controllers. The system is built on a software-defined radio (SDR) platform (USRP B210), which captures RF signals and converts them into spectrograms for analysis using deep learning. A labeled dataset of drone and non-drone signals was developed to train and evaluate detection models. Two state-of-the-art architectures, YOLOv5 and Faster R-CNN, were adapted to this task, with evaluation under varying signal-to-noise ratio (SNR) conditions. Results demonstrate that the proposed system achieves high detection accuracy and robustness even in noisy environments, highlighting its potential as a scalable and practical solution for RF-based drone monitoring.
Saber et al. (Mon,) studied this question.
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