| Literature DB >> 31698860 |
Ruben Morales Ferre1, Alberto de la Fuente2, Elena Simona Lohan1.
Abstract
This paper proposes to treat the jammer classification problem in the Global Navigation Satellite System bands as a black-and-white image classification problem, based on a time-frequency analysis and image mapping of a jammed signal. The paper also proposes to apply machine learning approaches in order to sort the received signal into six classes, namely five classes when the jammer is present with different jammer types and one class where the jammer is absent. The algorithms based on support vector machines show up to 94 . 90 % accuracy in classification, and the algorithms based on convolutional neural networks show up to 91 . 36 % accuracy in classification. The training and test databases generated for these tests are also provided in open access.Entities:
Keywords: Convolutional Neural Networks (CNN); Global Navigation Satellite Systems (GNSS); Support Vector Machines (SVN); classification; deep learning; image processing; jamming
Year: 2019 PMID: 31698860 PMCID: PMC6891345 DOI: 10.3390/s19224841
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Spectrograms of common jamming signals in the baseband. All graphs contain a signal mixture of the jamming signal and the GPS L1 signal, where the C/N is 45 dB and the JSR is 50 dB. (a) No jammer. (b) AM jammer. (c) Chirp jammer. (d) FM jammer. (e) Pulse jammer. (f) NB jammer.
Figure 2Block diagram of the proposed methodology.
Figure 3SVM binary classification.
Figure 4SVM binary classification with non-linear separation.
Figure 5Layer architecture list.
Figure 6Binary spectrogram images of common jamming signals in the baseband. (a) No jammer. (b) AM jammer. (c) Chirp jammer. (d) FM jammer. (e) Pulse jammer. (f) NB jammer.
Jammer parameters’ summary.
| Jammer Type | Parameter |
|---|---|
| AM jammer | |
| Chirp | |
| FM jammer | |
| NB jammer | |
| Pulse jammer |
Figure 7SVM confusion matrix.
Figure 8CNN confusion matrix.