Litcius/Paper detail

Drone Model Classification Using Convolutional Neural Network Trained on Synthetic Data

M. Wiśniewski, Zeeshan A. Rana, Ivan Petrunin

2022Journal of Imaging45 citationsDOIOpen Access PDF

Abstract

We present a convolutional neural network (CNN) that identifies drone models in real-life videos. The neural network is trained on synthetic images and tested on a real-life dataset of drone videos. To create the training and validation datasets, we show a method of generating synthetic drone images. Domain randomization is used to vary the simulation parameters such as model textures, background images, and orientation. Three common drone models are classified: DJI Phantom, DJI Mavic, and DJI Inspire. To test the performance of the neural network model, Anti-UAV, a real-life dataset of flying drones is used. The proposed method reduces the time-cost associated with manually labelling drones, and we prove that it is transferable to real-life videos. The CNN achieves an overall accuracy of 92.4%, a precision of 88.8%, a recall of 88.6%, and an f1 score of 88.7% when tested on the real-life dataset.

Topics & Concepts

DroneComputer scienceConvolutional neural networkArtificial intelligencePattern recognition (psychology)Artificial neural networkF1 scoreDeep learningComputer visionGeneticsBiologyVideo Surveillance and Tracking MethodsAdvanced Neural Network ApplicationsUAV Applications and Optimization
Drone Model Classification Using Convolutional Neural Network Trained on Synthetic Data | Litcius