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Comparison of features from SAR and GMTI imagery of ground targets

机译:SAR和GMTI地面目标影像的特征比较

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摘要

We describe an algorithm for class-independent automated target recognition (ATR) and association using range-Doppler images of moving targets and SAR images of stationary targets. This algorithm can be used both for target identification (by comparison against a pre-existing database of measurements of all potential targets) and target association (not requiring a pre-existing database). The algorithm computes a one-dimensional signature for each received range-Doppler image; these signatures are stored in a database for comparison against other detections. The signatures used in our algorithm are range profiles, generated from the clutter-suppressed, filtered image by incoherently integrating the image energy across a number of Doppler bins centered on the target. The result is then normalized, to remove information about the overall cross-section from the profile, and range-aligned with other collected profiles by matching the profile centroids. Statistical models of the profiles are created as the targets are tracked, and newly-created profiles are compared against the existing models by computing the likelihood of the new profile given a particular model.
机译:我们描述了一种算法,用于使用运动目标的距离多普勒图像和静止目标的SAR图像进行类无关的自动目标识别(ATR)和关联。该算法既可以用于目标识别(通过与所有潜在目标的测量的现有数据库进行比较),又可以用于目标关联(不需要现有的数据库)。该算法为每个接收到的距离多普勒图像计算一维签名。这些签名存储在数据库中,以便与其他检测结果进行比较。我们的算法中使用的签名是范围配置文件,它是通过将杂乱抑制的滤波图像通过以目标为中心的多个多普勒频段上的图像能量进行非相干积分而生成的。然后将结果归一化,以从轮廓中删除有关整个横截面的信息,并通过匹配轮廓质心与其他收集的轮廓进行范围对齐。在跟踪目标时创建概要文件的统计模型,并通过计算给定特定模型的新概要文件的可能性,将新创建的概要文件与现有模型进行比较。

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