Abstract

Aiming at the multiple target recognition problems in large-scene SAR image with strong speckle, a robust full-process method from target detection, feature extraction to target recognition is studied in this paper. By introducing a simple 8-neighborhood orthogonal basis, a local multiscale decomposition method from the center of gravity of the target is presented. Using this method, an image can be processed with a multilevel sampling filter and the target’s multiscale features in eight directions and one low frequency filtering feature can be derived directly by the key pixels sampling. At the same time, a recognition algorithm organically integrating the local multiscale features and the multiscale wavelet kernel classifier is studied, which realizes the quick classification with robustness and high accuracy for multiclass image targets. The results of classification and adaptability analysis on speckle show that the robust algorithm is effective not only for the MSTAR (Moving and Stationary Target Automatic Recognition) target chips but also for the automatic target recognition of multiclass/multitarget in large-scene SAR image with strong speckle; meanwhile, the method has good robustness to target’s rotation and scale transformation.

Highlights

  • Synthetic Aperture Radar (SAR) is an important sensor due to its all weather, day/night, high resolution imaging, and long standoff capability

  • Along with the development of radar technologies, as well as with increasing demands for target identification in radar applications, automatic target recognition (ATR) using SAR has become an important branch of image recognition

  • Compared with the other image target recognition such as the face recognition, the gesture recognition, the fingerprint recognition, and the gait recognition, great obstacles are brought to the usability and recognition efficiency of SAR ATR as the strong speckle and low image resolution

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Summary

Introduction

Synthetic Aperture Radar (SAR) is an important sensor due to its all weather, day/night, high resolution imaging, and long standoff capability. As there is only one target in each sample chip, the difficulty of target feature extraction is significantly reduced, which gives a low availability for practical applications These algorithms are not the real sense of SAR image ATR. The performance evaluation, especially the robustness and adaptability analysis of the algorithm, is very important work [17] On this basis, a robust method from target detection, feature extraction to target recognition is studied, which can solve the multitarget ATR in large-scene SAR images effectively. The presented algorithm is a fullprocess image target recognition method, which can realize the steps from multiple targets detection, feature extraction to target recognition in large-scene SAR images, and has better practical application value.

Feature Extraction and Design of Classifier
Robust ATR Complexity Analysis and Adaptability Analysis
Experiments
Findings
Conclusions
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