• Title of article

    General Linear Chirplet Transform and Radar Target Classification

  • Author/Authors

    Amiri ، R. Technical and Engineering Faculty - Islamic Azad University, South Tehran Branch , Shahzadi ، A. Technical and Engineering Faculty - Semnan University

  • From page
    113
  • To page
    122
  • Abstract
    In this paper, we design an attractive algorithm aiming to classify moving targets including human, animal, vehicle and drone, at ground surveillance radar systems. The non-stationary reflected signal of the targets is represented with a novel mathematical framework based on behavior of the signal components in reality. We further propose using the generalized linear chirp transform for the analysis stage. To enhance the classification performance, the rotation invariant pseudo Zernike-Moments are extracted from the time-frequency map. Consequently, the obtained features are trained to the k-NN classifier. In the numerical experiments we show the superiority of the proposed method in comparison with the existing recent counterparts, for both performance as well as the computational complexity. The results indicate that the proposed method obtains the rate of 95% accuracy in classification performance, when the signal to noise ratio is higher than 25dB. Index Terms—Automatic Target Recognition (ATR), General Linear Chirplet Transform (GLCT), Moving Target Detector (MTD), Radar Target Classification, Short Time Fourier Transform (STFT).
  • Keywords
    Automatic Target Recognition (ATR) , General Linear Chirplet Transform (GLCT) , Moving Target Detector (MTD) , Radar Target Classification
  • Journal title
    Amirkabir International Journal of Electrical and Electronics Engineering
  • Journal title
    Amirkabir International Journal of Electrical and Electronics Engineering
  • Record number

    2616548