Deep Learning Approach to UAV Detection and Classification by Using Compressively Sensed RF Signal

被引:17
|
作者
Mo, Yongguang [1 ]
Huang, Jianjun [1 ]
Qian, Gongbin [2 ]
机构
[1] Shenzhen Univ, ATR Key Lab, Coll Elect & Informat Engn, Guangdong Key Lab Intelligent Informat Precessing, Shenzhen 518060, Peoples R China
[2] Shenzhen Univ, Coll Elect & Informat Engn, Shenzhen 518060, Peoples R China
关键词
unmanned aerial vehicles; detection and identification; radio frequency; compressed sensing; deep learning; DRONE DETECTION;
D O I
10.3390/s22083072
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Recently, the frequent occurrence of the misuse and intrusion of UAVs has made it a research challenge to identify and detect them effectively, and relatively high bandwidth and pressure on data transmission and real-time processing exist when sampling UAV communication signals using the RF detection method. In this paper, firstly, for data sampling, we chose a compressed sensing technique to replace the traditional sampling theorem and used a multi-channel random demodulator to sample the signal; secondly, for the detection and identification of the presence, type, and flight pattern of UAVs, a multi-stage deep learning-based UAV identification and detection method was proposed by exploiting the difference in communication signals between UAVs and controllers under different circumstances. The data samples are first passed by detectors that detect the presence of UAVs, then classifiers are used to identify the type of UAVs, and finally flight patterns are judged by the corresponding classifiers, for which two neural network structures (DNN and CNN) are constructed by deep learning algorithms and evaluated and validated by a 10-fold cross-validation method, with the DNN network used for detectors and the CNN network for subsequent type and flying mode classification. The experimental results demonstrate, first, the effectiveness of using compressed sensing for sampling the communication signals of UAVs and controllers; and second, the detecting method with multi-stage DL detects higher efficiency and accuracy compared with existing detecting methods, detecting the presence, type, and flight model of UAVs with an accuracy of over 99%.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Detection and Classification of Defects in Plastic Components Using a Deep Learning Approach
    Mameli, Marco
    Paolanti, Marina
    Mancini, Adriano
    Frontoni, Emanuele
    Zingaretti, Primo
    INTELLIGENT AUTONOMOUS SYSTEMS 16, IAS-16, 2022, 412 : 713 - 722
  • [22] Detection of River Plastic Using UAV Sensor Data and Deep Learning
    Maharjan, Nisha
    Miyazaki, Hiroyuki
    Pati, Bipun Man
    Dailey, Matthew N.
    Shrestha, Sangam
    Nakamura, Tai
    REMOTE SENSING, 2022, 14 (13)
  • [23] UAV Classification with Deep Learning Using Surveillance Radar Data
    Samaras, Stamatios
    Magoulianitis, Vasileios
    Dimou, Anastasios
    Zarpalas, Dimitrios
    Daras, Petros
    COMPUTER VISION SYSTEMS (ICVS 2019), 2019, 11754 : 744 - 753
  • [24] Damage detection with an autonomous UAV using deep learning
    Kang, Dongho
    Cha, Young-Jin
    SENSORS AND SMART STRUCTURES TECHNOLOGIES FOR CIVIL, MECHANICAL, AND AEROSPACE SYSTEMS 2018, 2018, 10598
  • [25] Deep-Learning fault detection and classification on a UAV propulsion system
    Brulin, Pierre-Yves
    Khenfri, Fouad
    Rizoug, Nassim
    2022 24TH EUROPEAN CONFERENCE ON POWER ELECTRONICS AND APPLICATIONS (EPE'22 ECCE EUROPE), 2022,
  • [26] Real-Time and Embedded Deep Learning on FPGA for RF Signal Classification
    Soltani, Sohraab
    Sagduyu, Yalin E.
    Hasan, Raqibul
    Davaslioglu, Kemal
    Deng, Hongmei
    Erpek, Tugba
    MILCOM 2019 - 2019 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM), 2019,
  • [27] Deep Learning-Based Approach for Low Probability of Intercept Radar Signal Detection and Classification
    G. Ghadimi
    Y. Norouzi
    R. Bayderkhani
    M. M. Nayebi
    S. M. Karbasi
    Journal of Communications Technology and Electronics, 2020, 65 : 1179 - 1191
  • [28] Heartbeat Sound Signal Classification Using Deep Learning
    Raza, Ali
    Mehmood, Arif
    Ullah, Saleem
    Ahmad, Maqsood
    Choi, Gyu Sang
    On, Byung-Won
    SENSORS, 2019, 19 (21)
  • [29] Deep Learning-Based Approach for Low Probability of Intercept Radar Signal Detection and Classification
    Ghadimi, G.
    Norouzi, Y.
    Bayderkhani, R.
    Nayebi, M. M.
    Karbasi, S. M.
    JOURNAL OF COMMUNICATIONS TECHNOLOGY AND ELECTRONICS, 2020, 65 (10) : 1179 - 1191
  • [30] Supervised Classification of Multisensor Remotely Sensed Images Using a Deep Learning Framework
    Piramanayagam, Sankaranarayanan
    Saber, Eli
    Schwartzkopf, Wade
    Koehler, Frederick W.
    REMOTE SENSING, 2018, 10 (09)