Abstract

This paper proposes a synthetic aperture radar (SAR) automatic target recognition (ATR) method via hierarchical fusion of two classification schemes, i.e., convolutional neural networks (CNN) and attributed scattering center (ASC) matching. CNN can work with notably high effectiveness under the standard operating condition (SOC). However, it can hardly cope with various extended operating conditions (EOCs), which are not covered by the training samples. In contrast, the ASC matching can handle many EOCs related to the local variations of the target by building a one-to-one correspondence between two ASC sets. Therefore, it is promising that both effectiveness and efficiency of the ATR method can be improved by combining the merits of the two classification schemes. The test sample is first classified by CNN. A reliability level calculated based on the outputs from CNN. Once there is a notably reliable decision, the whole recognition process terminates. Otherwise, the test sample will be further identified by ASC matching. To evaluate the performance of the proposed method, extensive experiments are conducted on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset under SOC and various EOCs. The results demonstrate the superior effectiveness and robustness of the proposed method compared with several state-of-the-art SAR ATR methods.

Highlights

  • As a microwave sensor, synthetic aperture radar (SAR) has the capability to work under all-day and all-weather conditions providing a powerful tool for the battlefield surveillance in modern wars

  • A SAR automatic target recognition (ATR) method by hierarchically fusing convolutional neural networks (CNN) and attributed scattering center (ASC) matching is proposed in this study

  • CNN can achieve notably high classification accuracy under standard operating condition (SOC), when the test samples are covered by the training set

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Summary

Introduction

Synthetic aperture radar (SAR) has the capability to work under all-day and all-weather conditions providing a powerful tool for the battlefield surveillance in modern wars. Mishra applies PCA and LDA to feature extraction of SAR images and compares their performances on target recognition [14]. In [21], an ASC-matching method is proposed based on Bayesian theory with application to target recognition. As reported in several CNN-based SAR ATR methods [39,40,41,42], they could achieve notably high recognition accuracies under the stand operating condition (SOC). A SAR ATR method is proposed via hierarchical fusion of CNN and ASC matching. For the test samples, which cannot be reliably classified by CNN, they are possibly from EOCs. ASC matching tends to achieve more reliable decisions for these samples.

Basic Theory
Architecture of the Proposed CNN
Sparse Representation for ASC Extraction
Calculate correlation
ASC Matching
Similarity Evaluation
Hierarchical Fusion of CNN and ASC Matching for SAR ATR
Data Preparation and Experimental Setup
Preliminary Verification
Performance under Different Thresholds
Noise Corruption
Partial Occlusion
Limited Training Samples
Findings
Conclusions
Full Text
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