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Radar signals classification using ٍEnergy-Time-Frequency Distribution features
2020
IET radar, sonar & navigation
In this research, the authors extract features from intermediate frequency band radar signals in the time-frequency domain for classification. The extracted features are classified via support vector machine and K-nearest neighbour classifiers. They show the accuracy of classification is above 99% for different classes of radar signals except for frequency shift keying signal with accuracy 83% in negative signal-to-noise ratio (SNR). To identify the radars with the same class, the
doi:10.1049/iet-rsn.2019.0331
fatcat:pe2qlaajajce5p5zit3eajt23a