Abstract

The extraction of a valuable set of features and the design of a discriminative classifier are crucial for target recognition in SAR image. Although various features and classifiers have been proposed over the years, target recognition under extended operating conditions (EOCs) is still a challenging problem, e.g., target with configuration variation, different capture orientations, and articulation. To address these problems, this paper presents a new strategy for target recognition. We first propose a low-dimensional representation model via incorporating multi-manifold regularization term into the low-rank matrix factorization framework. Two rules, pairwise similarity and local linearity, are employed for constructing multiple manifold regularization. By alternately optimizing the matrix factorization and manifold selection, the feature representation model can not only acquire the optimal low-rank approximation of original samples, but also capture the intrinsic manifold structure information. Then, to take full advantage of the local structure property of features and further improve the discriminative ability, local sparse representation is proposed for classification. Finally, extensive experiments on moving and stationary target acquisition and recognition (MSTAR) database demonstrate the effectiveness of the proposed strategy, including target recognition under EOCs, as well as the capability of small training size.

Highlights

  • Synthetic aperture radar (SAR) has been widely applied in civilian and military applications due to its capability of providing all-weather, all-day, high-resolution images

  • manifold regularized low-rank approximation (MLA) refers to obtaining a low-dimensional representation of SAR images

  • LSR refers to using a local sparse representation for classification

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Summary

Introduction

Synthetic aperture radar (SAR) has been widely applied in civilian and military applications due to its capability of providing all-weather, all-day, high-resolution images. Babaee et al [14] introduced two NMF variants, i.e., variance-constrained NMF and centre map NMF, to describe SAR images in an interactive system These matrix factorization methods fail to discover the intrinsic geometric structure of samples, which is essential for real-world applications, in the area of feature extraction. Inspired by the aforementioned works, this paper proposes a new strategy, named local sparse representation of multi-manifold regularized low-rank approximation (MLA-LSR), for target recognition in SAR images.

Low-Rank Matrix Factorization
Manifold Regularized Low-Rank Matrix Factorization
Feature Extraction via Multi-Manifold Regularized Low-Rank Approximation
Multi-Manifold Regularization Term
Multi-Manifold Regularized Low-Rank Approximation
Target Classification via Local Sparse Representation of MLA
Experiments and Discussion
Fundamental Verifications
The Comparison of Feature Representation Model
The Comparison of Classification Model
Convergence Analysis
Recognition Performance Evaluation
Performance on Configuration Variation
Performance on Ten-class
Performance on Larger Depression and Articulation Variation
Performance on Small Sample Size
Findings
Computational Complexity
Conclusions
Full Text
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