Software defined radio based drone detection using machine learning algorithm
Abstract
In this new era, misuse of drones and harmful acts that can be done using drones
make it hard to detect and classify drones effectively due to the larger bandwidth and
real-time processing. The purpose of this research is to find a better machine-learning
algorithm to detect and classify the emitting signals from a drone or a remote controller.
We built multiple classification models and trained them over the dataset we obtained
using Software Defined Radio (SDR) and drone remote controller. We have compared
the performances of all these models and logged their results in terms of prediction
accuracies. Based on the accuracy results, K-Nearest Neighbor classifier has given the
highest accuracy among all other models.
Collections
- Engineering [37]