Litcius/Paper detail

Convolutional Neural Networks for Classification of Drones Using Radars

Divy Raval, Emily Hunter, Sinclair Hudson, Anthony Damini, Bhashyam Balaji

2021Drones36 citationsDOIOpen Access PDF

Abstract

The ability to classify drones using radar signals is a problem of great interest. In this paper, we apply convolutional neural networks (CNNs) to the Short-Time Fourier Transform (STFT) spectrograms of the simulated radar signals reflected from the drones. The drones vary in many ways that impact the STFT spectrograms, including blade length and blade rotation rates. Some of these physical parameters are captured in the Martin and Mulgrew model which was used to produce the datasets. We examine the data under X-band and W-band radar simulation scenarios and show that a CNN approach leads to an F1 score of 0.816±0.011 when trained on data with a signal-to-noise ratio (SNR) of 10 dB. The neural network which was trained on data from an X-band radar with 2 kHz pulse repetition frequency was shown to perform better than the CNN trained on the aforementioned W-band radar. It remained robust to the drone blade pitch and its performance varied directly in a linear fashion with the SNR.

Topics & Concepts

SpectrogramRadarShort-time Fourier transformComputer scienceConvolutional neural networkDroneArtificial intelligencePulse repetition frequencyNoise (video)Pattern recognition (psychology)Time–frequency analysisAutoregressive modelArtificial neural networkSpeech recognitionFourier transformTelecommunicationsMathematicsFourier analysisStatisticsGeneticsMathematical analysisBiologyImage (mathematics)Advanced SAR Imaging TechniquesRadar Systems and Signal ProcessingTarget Tracking and Data Fusion in Sensor Networks