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Target classification in synthetic aperture radar using map-seeking circuit technology

机译:利用寻图电路技术的合成孔径雷达目标分类

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Conventional target recognition approaches for SAR include template matching and feature-based classification. However, unlike visual imagery, Synthetic Aperture Radar (SAR) presents a unique challenge in that many attributes, such as scattering centers, are extremely pose dependent and wink in and out with even minor viewing geometry changes. This work implements a highly efficient biologically-inspired 3D template-based approach, the Map Seeking Circuit (MSC) algorithm, for target recognition in SAR. Instead of exhaustively searching a high dimensional state space, the MSC algorithm efficiently searches a superposition hypersurface to estimate target location and 3D pose. Results are shown from applying the algorithm to real SAR datasets
机译:SAR的常规目标识别方法包括模板匹配和基于特征的分类。但是,与视觉图像不同,合成孔径雷达(SAR)提出了一个独特的挑战,即许多属性(例如散射中心)都非常依赖姿势,并且即使观察几何形状发生微小变化也可以眨眼之间。这项工作实现了一种高效的生物启发式3D模板方法,即寻图电路(MSC)算法,用于SAR中的目标识别。 MSC算法不是穷举搜索高维状态空间,而是有效搜索叠加超曲面以估计目标位置和3D姿态。显示了将该算法应用于实际SAR数据集的结果

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