Title of article :
Feature Extraction and Fusion for Automatic Target Recognition Based ISAR Images
Author/Authors :
SAIDI MOHAMED NABIL، نويسنده , , TOUMI ABDELMALEK، نويسنده , , KHENCHAF ALI، نويسنده , , ABOUTAJDINE DRISS، نويسنده , , HOELTZENER BRIGITTE، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
10
From page :
1
To page :
10
Abstract :
This paper presents aircraft target recognition (ATR) system using Inverse Synthetic ApertureRadar (ISAR). The methodology used to design the complete processing chain from the acquisition stepto the recognition (classification) step is based on the artificial intelligence approach. This process isknown as Knowledge Discovery from Data (KDD) which we have adapted to radar target recognitionsystem. We propose a new method for target shape extraction from ISAR images based on the combinationof a modified SUSAN Algorithm and Variational of Level Set. To guarantee the invariance intranslation and rotation of the extracted shape, the moment invariants and Fourier descriptors are used. Inthe second part of this work,We have investigated the impact of the information fusion on our recognitionsystem. Therefore, three combination strategies: probability theory, majority vote and belief theory areapplied at score and decision level. The classification results are obtained using Support VectorMachine (SVM) classifier. In the last section, experimental results are provided and discussed
Keywords :
Inverse synthetic aperture radar , Automatic target recognition , Information fusion , Edges detection and feature vectors , Probability theory , Majority Vote , Belief theory
Journal title :
INFOCOMP Journal of Computer Science
Serial Year :
2009
Journal title :
INFOCOMP Journal of Computer Science
Record number :
668573
Link To Document :
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