DocumentCode
2305233
Title
A New Hybrid Approach to Radar Target Classification for the Estimation of Scattering Centers
Author
Gultekin, O. ; Gunel, Tayfun ; Erer, I.
Author_Institution
Elektrik-Elektron. Fakultesi, Istanbul Teknik Univ.
fYear
2006
fDate
17-19 April 2006
Firstpage
1
Lastpage
4
Abstract
Radar images, range profiles and scattering centers are used as feature parameters in radar target classification applications. Scattering center parameters, when used as feature parameters, enable an efficient compression of feature space compared to classical target classification methods based on radar images and range profiles. A method used for the estimation of scattering centers via cancellation of side lobes is the CLEAN algorithm. In this work, model based Prony, MUSIC, ESPRIT and evolutionary based CLEAN methods are applied for the estimation of scattering centers. A hybrid method is proposed which improves the convergence of evolutionary based CLEAN. Scattering centers which are estimated by aforementioned methods are classified using correlation based matching score method, Bayes classifier and artificial neural networks. Classification is accomplished using simulated data of four different aircraft models created by the point target model at different frequency bands and aspect angles
Keywords
Bayes methods; S-parameters; image classification; image matching; neural nets; radar imaging; Bayes classifier; ESPRIT; MUSIC; artificial neural network; correlation based matching score method; evolutionary based CLEAN method; radar target classification; scattering center estimation; Artificial neural networks; Brain modeling; Convergence; Image coding; Multiple signal classification; Radar applications; Radar imaging; Radar scattering; Scattering parameters; Spaceborne radar;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal Processing and Communications Applications, 2006 IEEE 14th
Conference_Location
Antalya
Print_ISBN
1-4244-0238-7
Type
conf
DOI
10.1109/SIU.2006.1659770
Filename
1659770
Link To Document