142 / 2015-10-27 19:01:40
Euler 2D-PCA for SAR Target recognition
Euler-Principal Component Analysis, Classification, Synthetic Aperture Radar, Target Recognition
Draft Accepted
苏 刘 / 南京航空航天大学
Euler-Principal Component Analysis (e-PCA) has been recently proposed and successfully applied to the classification frame works. By utilizing the robust dissimilarity measure e-PCA demonstrates better performance than standard PCA while dealing with nonlinear component analysis and suppressing outliers. In this letter, we define a two-Dimensional Euler-Principal Component Analysis (e-2DPCA) framework for SAR image processing. e-2DPCA is based on 2D image matrixes rather than 1D vector which could understand two dimensional (2D) images better and get rid of high dimensional data processing. Furthermore, we applied this algorithm to SAR target recognition. Finally, experiments on MSTAR database perform the usefulness of our method in robust classification towards different situation.
Important Date
  • Conference Date

    Mar 23

    2016

    to

    Mar 25

    2016

  • Nov 30 2015

    Early Bird Registration

  • Dec 30 2015

    Draft paper submission deadline

  • Jan 30 2016

    Draft Paper Acceptance Notification

  • Feb 05 2016

    Final Paper Deadline

  • Mar 25 2016

    Registration deadline

Sponsored By
IEEE Madras Section
SSN College of Engineering - SSN Trust
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