The search functionality is under construction.
The search functionality is under construction.

Author Search Result

[Author] Xunchao CONG(2hit)

1-2hit
  • Robust Widely Linear Beamforming via an IAA Method for the Augmented IPNCM Reconstruction

    Jiangbo LIU  Guan GUI  Wei XIE  Xunchao CONG  Qun WAN  Fumiyuki ADACHI  

     
    LETTER-Digital Signal Processing

      Vol:
    E100-A No:7
      Page(s):
    1562-1566

    Based on the reconstruction of the augmented interference-plus-noise (IPN) covariance matrix (CM) and the estimation of the desired signal's extended steering vector (SV), we propose a novel robust widely linear (WL) beamforming algorithm. Firstly, an extension of the iterative adaptive approach (IAA) algorithm is employed to acquire the spatial spectrum. Secondly, the IAA spatial spectrum is adopted to reconstruct the augmented signal-plus-noise (SPN) CM and the augmented IPNCM. Thirdly, the extended SV of the desired signal is estimated by using the iterative robust Capon beamformer with adaptive uncertainty level (AU-IRCB). Compared with several representative robust WL beamforming algorithms, simulation results are provided to confirm that the proposed method can achieve a better performance and has a much lower complexity.

  • Quadratic Compressed Sensing Based SAR Imaging Algorithm for Phase Noise Mitigation

    Xunchao CONG  Guan GUI  Keyu LONG  Jiangbo LIU  Longfei TAN  Xiao LI  Qun WAN  

     
    LETTER-Digital Signal Processing

      Vol:
    E99-A No:6
      Page(s):
    1233-1237

    Synthetic aperture radar (SAR) imagery is significantly deteriorated by the random phase noises which are generated by the frequency jitter of the transmit signal and atmospheric turbulence. In this paper, we recast the SAR imaging problem via the phase-corrupted data as for a special case of quadratic compressed sensing (QCS). Although the quadratic measurement model has potential to mitigate the effects of the phase noises, it also leads to a nonconvex and quartic optimization problem. In order to overcome these challenges and increase reconstruction robustness to the phase noises, we proposed a QCS-based SAR imaging algorithm by greedy local search to exploit the spatial sparsity of scatterers. Our proposed imaging algorithm can not only avoid the process of precise random phase noise estimation but also acquire a sparse representation of the SAR target with high accuracy from the phase-corrupted data. Experiments are conducted by the synthetic scene and the moving and stationary target recognition Sandia laboratories implementation of cylinders (MSTAR SLICY) target. Simulation results are provided to demonstrate the effectiveness and robustness of our proposed SAR imaging algorithm.