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Fast algorithm for maneuvering target detection in SAR imagery based on gridding and fusion of texture features

机译:基于纹理特征网格化和融合的SAR图像机动目标检测快速算法

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Designing detection algorithms with high efficiency for Synthetic Aperture Radar (SAR) imagery is essential for the operator SAR Automatic Target Recognition (ATR) system. This work abandons the detection strategy of visiting every pixel in SAR imagery as done in many traditional detection algorithms, and introduces the gridding and fusion idea of different texture features to realize fast target detection. It first grids the original SAR imagery, yielding a set of grids to be classified into clutter grids and target grids, and then calculates the texture features in each grid. By fusing the calculation results, the target grids containing potential maneuvering targets are determined. The dual threshold segmentation technique is imposed on target grids to obtain the regions of interest. The fused texture features, including local statistics features and Gray-Level Co-occurrence Matrix (GLCM), are investigated. The efficiency and superiority of our proposed algorithm were tested and verified by comparing with existing fast detection algorithms using real SAR data. The results obtained from the experiments indicate the promising practical application value of our study.
机译:设计合成孔径雷达(SAR)图像的高效检测算法对于运营商SAR自动目标识别(ATR)系统至关重要。这项工作放弃了许多传统检测算法所采用的访问SAR图像中每个像素的检测策略,并引入了不同纹理特征的网格化和融合思想来实现快速目标检测。它首先对原始SAR图像进行网格化,生成一组要分类为杂乱网格和目标网格的网格,然后计算每个网格中的纹理特征。通过融合计算结果,确定包含潜在机动目标的目标网格。将双阈值分割技术强加于目标网格以获得感兴趣的区域。研究了融合的纹理特征,包括局部统计特征和灰度共生矩阵(GLCM)。通过与使用实际SAR数据的现有快速检测算法进行比较,对我们提出的算法的效率和优越性进行了测试和验证。从实验中获得的结果表明了我们研究的有希望的实际应用价值。

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