Cross-frequency training with adversarial learning for radar micro-Doppler signature classification

被引:28
作者
Gurbuz, Sevgi Z. [1 ]
Rahman, M. Mahbubur [1 ]
Kurtoglu, Emre [1 ]
Macks, Trevor [1 ]
Fioranelli, Francesco [2 ]
机构
[1] Univ Alabama, Tuscaloosa, AL 35487 USA
[2] Delft Univ Technol, Delft, Netherlands
来源
RADAR SENSOR TECHNOLOGY XXIV | 2020年 / 11408卷
关键词
Micro-Doppler classification; radar networks; transfer learning; generative adversarial networks; RECOGNITION; NETWORKS; SYSTEM;
D O I
10.1117/12.2559155
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Deep neural networks have become increasingly popular in radar micro-Doppler classification; yet, a key challenge, which has limited potential gains, is the lack of large amounts of measured data that can facilitate the design of deeper networks with greater robustness and performance. Several approaches have been proposed in the literature to address this problem, such as unsupervised pre-training and transfer learning from optical imagery or synthetic RF data. This work investigates an alternative approach to training which involves exploitation of "datasets of opportunity" - micro-Doppler datasets collected using other RF sensors, which may be of a different frequency, bandwidth or waveform - for the purposes of training. Specifically, this work compares in detail the cross-frequency training degradation incurred for several different training approaches and deep neural network (DNN) architectures. Results show a 70% drop in classification accuracy when the RF sensors for pre-training, fine-tuning, and testing are different, and a 15% degradation when only the pre-training data is different, but the fine-tuning and test data are from the same sensor. By using generative adversarial networks (GANs), a large amount of synthetic data is generated for pre-training. Results show that cross-frequency performance degradation is reduced by 50% when kinematically-sifted GAN-synthesized signatures are used in pre-training.
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页数:11
相关论文
共 37 条
  • [1] Alnujaim I, 2019, INT GEOSCI REMOTE SE, P9459, DOI [10.1109/igarss.2019.8898073, 10.1109/IGARSS.2019.8898073]
  • [2] Hand Gesture Recognition Using Input Impedance Variation of Two Antennas with Transfer Learning
    Alnujaim, Ibrahim
    Alali, Hashim
    Khan, Faisal
    Kim, Youngwook
    [J]. IEEE SENSORS JOURNAL, 2018, 18 (10) : 4129 - 4135
  • [3] Radar Signal Processing for Elderly Fall Detection The future for in-home monitoring
    Amin, Moeness G.
    Zhang, Yimin D.
    Ahmad, Fauzia
    Ho, K. C.
    [J]. IEEE SIGNAL PROCESSING MAGAZINE, 2016, 33 (02) : 71 - 80
  • [4] Bengio Y, 2011, P 2011 INT C UNS TRA, V27, P17
  • [5] Target Classification Using the Deep Convolutional Networks for SAR Images
    Chen, Sizhe
    Wang, Haipeng
    Xu, Feng
    Jin, Ya-Qiu
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2016, 54 (08): : 4806 - 4817
  • [6] deBerg M., 2009, COMPUTATIONAL GEOMET
  • [7] Dell'Aversano A, 2017, IEEE SENSOR LETT, V1, DOI 10.1109/LSENS.2017.2704902
  • [8] Donerty HG, 2019, EUROP RADAR CONF, P197
  • [9] Efficient human activity classification via sparsity-driven transfer learning
    Du, Hao
    Jin, Tian
    Song, Yongping
    Dai, Yongpeng
    Li, Meng
    [J]. IET RADAR SONAR AND NAVIGATION, 2019, 13 (10) : 1741 - 1746
  • [10] Erol B., 2020, IEEE T AERO ELEC SYS, V1