Micro-UAV Detection and Classification from RF Fingerprints Using Machine Learning Techniques

This paper focuses on the detection and classification of micro-unmanned aerial vehicles (UAVs)using radio frequency (RF)fingerprints of the signals transmitted from the controller to the micro-UAV. In the detection phase, raw signals are split into frames and transformed into the wavelet domain to remove the bias in the signals and reduce the size of data to be processed. A naive Bayes approach, which is based on Markov models generated separately for UAV and non-UAV classes, is used to check for the presence of a UAV in each frame. In the classification phase, unlike the traditional approaches that rely solely on time-domain signals and corresponding features, the proposed technique uses the energy transient signal. This approach is more robust to noise and can cope with different modulation techniques. First, the normalized energy trajectory is generated from the energy-time-frequency distribution of the raw control signal. Next, the start and end points of the energy transient are detected by searching for the most abrupt changes in the mean of the energy trajectory. Then, a set of statistical features is extracted from the energy transient. Significant features are selected by performing neighborhood component analysis (NCA)to keep the computational cost of the algorithm low. Finally, selected features are fed to several machine learning algorithms for classification. The algorithms are evaluated experimentally using a database containing 100 RF signals from each of 14 different UAV controllers. The signals are recorded wirelessly using a high-frequency oscilloscope. The data set is randomly partitioned into training and test sets for validation with the ratio 4:1. Ten Monte Carlo simulations are run and results are averaged to assess the performance of the methods. All the micro-UAVs are detected correctly and an average accuracy of 96.3% is achieved using the k-nearest neighbor (kNN)classification. Proposed methods are also tested for different signal-to-noise ratio (SNR)levels and results are reported.

[1]  Ismail Güvenç,et al.  Micro-UAV Detection with a Low-Grazing Angle Millimeter Wave Radar , 2019, 2019 IEEE Radio and Wireless Symposium (RWS).

[2]  J. J. M. de Wit,et al.  Classification of small UAVs and birds by micro-Doppler signatures , 2013, 2013 European Radar Conference.

[3]  Junfeng Wu,et al.  A Surveillance System for Drone Localization and Tracking Using Acoustic Arrays , 2018, 2018 IEEE 10th Sensor Array and Multichannel Signal Processing Workshop (SAM).

[4]  Hani Mehrpouyan,et al.  Detection, localization, and tracking of unauthorized UAS and Jammers , 2017, 2017 IEEE/AIAA 36th Digital Avionics Systems Conference (DASC).

[5]  Bo Tang,et al.  Micro-Doppler Characteristics Analysis of Radar Signal from Multiple Targets Undergoing Micro-Motions , 2011 .

[6]  Marion Berbineau,et al.  Automatic Modulation Recognition Using Wavelet Transform and Neural Networks in Wireless Systems , 2010, 2009 9th International Conference on Intelligent Transport Systems Telecommunications, (ITST).

[7]  Michel Barbeau,et al.  DETECTION OF TRANSIENT IN RADIO FREQUENCY FINGERPRINTING USING SIGNAL PHASE , 2003 .

[8]  Peter Wellig,et al.  Detection and tracking of drones using advanced acoustic cameras , 2015, SPIE Security + Defence.

[9]  Hugh D. Griffiths,et al.  Amplitude modulation on echoes from large birds , 2014, 2014 11th European Radar Conference.

[10]  Andrea Sanna,et al.  New Frontiers of Delivery Services Using Drones: A Prototype System Exploiting a Quadcopter for Autonomous Drug Shipments , 2015, 2015 IEEE 39th Annual Computer Software and Applications Conference.

[11]  Shobha Sundar Ram,et al.  Classification of multiple targets based on disaggregation of Micro-Doppler signatures , 2016, 2016 Asia-Pacific Microwave Conference (APMC).

[12]  Luiz Alberto de Andrade,et al.  Analysis of Radar Cross Section Reduction of Fighter Aircraft by Means of Computer Simulation , 2014 .

[13]  Young-Jun Lee,et al.  Empirical study of drone sound detection in real-life environment with deep neural networks , 2017, 2017 25th European Signal Processing Conference (EUSIPCO).

[14]  Caidan Zhao,et al.  Detection of unmanned aerial vehicle signal based on Gaussian mixture model , 2017, 2017 12th International Conference on Computer Science and Education (ICCSE).

[15]  Licia Capodiferro,et al.  Drone detection by acoustic signature identification , 2017, IMAWM.

[16]  A. Ortega,et al.  Energy-efficient data representation and routing for wireless sensor networks based on a distributed wavelet compression algorithm , 2006, 2006 5th International Conference on Information Processing in Sensor Networks.

[17]  Radomír Ščurek,et al.  Możliwości wykorzystania bezzałogowych statków powietrznych do celów terrorystów , 2016 .

[18]  Gang Li,et al.  Sparsity-based dynamic hand gesture recognition using micro-Doppler signatures , 2017, 2017 IEEE Radar Conference (RadarConf).

[19]  Dongho Kang,et al.  Autonomous UAVs for Structural Health Monitoring Using Deep Learning and an Ultrasonic Beacon System with Geo‐Tagging , 2018, Comput. Aided Civ. Infrastructure Eng..

[20]  Hisaya Hadama,et al.  Characteristics of ultra-wideband radar echoes from a drone , 2017 .

[21]  Xiaojiang Du,et al.  Detection of LSSUAV using hash fingerprint based SVDD , 2017, 2017 IEEE International Conference on Communications (ICC).

[22]  Atef Z. Elsherbeni,et al.  DETECTION AND LOCALIZATION OF RF RADAR PULSES IN NOISE ENVIRONMENTS USING WAVELET PACKET TRANSFORM AND HIGHER ORDER STATISTICS , 2006 .

[23]  G. Strang Wavelet transforms versus Fourier transforms , 1993, math/9304214.

[24]  Emmanuel Zenou,et al.  Using Shape Descriptors for UAV Detection , 2018, IRIACV.

[25]  Hugh D. Griffiths,et al.  X-band measurements of radar signatures of large sea birds , 2014, 2014 International Radar Conference.

[26]  H. Ling,et al.  An Investigation on the Radar Signatures of Small Consumer Drones , 2017, IEEE Antennas and Wireless Propagation Letters.

[27]  Shaojie Tang,et al.  Data gathering in wireless sensor networks through intelligent compressive sensing , 2012, 2012 Proceedings IEEE INFOCOM.

[28]  Hao Liu,et al.  Drone Detection Based on an Audio-Assisted Camera Array , 2017, 2017 IEEE Third International Conference on Multimedia Big Data (BigMM).

[29]  Alexander Solodov,et al.  Analyzing the threat of unmanned aerial vehicles (UAV) to nuclear facilities , 2018 .

[30]  T. Thayaparan,et al.  Micro-Doppler Radar Signatures for Itelligent Target Recognition , 2004 .

[31]  Javier Gismero Menoyo,et al.  Drone Detection and RCS Measurements with Ubiquitous Radar , 2018, 2018 International Conference on Radar (RADAR).

[32]  Sinan Kalkan,et al.  Vision-Based Detection and Distance Estimation of Micro Unmanned Aerial Vehicles , 2015, Sensors.

[33]  Nicolas Rivière,et al.  Generic Fourier Descriptors for Autonomous UAV Detection , 2018, ICPRAM.

[34]  Antonio Ortega,et al.  Energy-efficient data representation and routing for wireless sensor networks based on a distributed wavelet compression algorithm , 2006, 2006 5th International Conference on Information Processing in Sensor Networks.

[35]  E. Ackerman,et al.  Medical delivery drones take flight in east africa , 2018, IEEE Spectrum.

[36]  Cemal Aker,et al.  Using deep networks for drone detection , 2017, 2017 14th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS).

[37]  Geoffrey E. Hinton,et al.  Neighbourhood Components Analysis , 2004, NIPS.

[38]  Igor Bisio,et al.  Unauthorized Amateur UAV Detection Based on WiFi Statistical Fingerprint Analysis , 2018, IEEE Communications Magazine.

[39]  Pin Lv,et al.  Using images rendered by PBRT to train faster R-CNN for UAV detection , 2018 .

[40]  Louise Hauzenberger,et al.  Drone Detection using Audio Analysis , 2015 .

[41]  Phillip E. Pace,et al.  Detecting and Classifying Low Probability of Intercept Radar , 2009 .

[42]  Wenchao Xu,et al.  Multiple Drone-Cell Deployment Analyses and Optimization in Drone Assisted Radio Access Networks , 2018, IEEE Access.

[43]  Carmine Clemente,et al.  'The Micro-Doppler Effect in Radar' by V.C. Chen , 2012 .