Abstract

Considering the defaults in synthetic aperture radar (SAR) image feature extraction, an SAR target recognition method based on non-subsampled Shearlet transform (NSST) was proposed with application to target recognition. NSST was used to decompose an SAR image into multilevel representations. These representations were translation-invariant, and they could well reflect the dominant and detailed properties of the target. During the machine learning classification stage, the joint sparse representation was employed to jointly represent the multilevel representations. The joint sparse representation could represent individual components independently while considering the inner correlations between different components. Therefore, the precision of joint representation could be enhanced. Finally, the target label of the test sample was determined according to the overall reconstruction error. Experiments were conducted on the MSTAR dataset to examine the proposed method, and the results confirmed its validity and robustness under the standard operating condition, configuration variance, depression angle variance, and noise corruption.

Highlights

  • Feature extraction is one of the key technologies for synthetic aperture radar (SAR) image data target recognition [1]

  • Aiming at the shortcomings of existing SAR image feature extraction, this paper proposes an SAR target recognition method based on non-subsampled Shearlet transform (NSST) feature extraction

  • Researchers proposed NSST, which is composed of a combination of non-subsampled pyramid (NSP) filters based on an improved cut filter bank (SF)

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Summary

Introduction

Feature extraction is one of the key technologies for synthetic aperture radar (SAR) image data target recognition [1]. Designing appropriate features can effectively maintain the target characteristics in the SAR image, and significantly reduce the redundant information in the image, thereby, improving the accuracy and efficiency of subsequent classification. At this stage, researchers have designed a large number of reliable features for the SAR target recognition problem, which can be divided into geometric shape features [2,3,4], electromagnetic features [5,6,7], and transform domain features [8,9,10,11]. Obtaining multilevel features through comprehensive analysis of SAR images will help improve the performance of subsequent classification

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