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Composite Class Models for SAR Recognition

机译:SAR识别的复合类模型

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摘要

This paper focuses on a genetic algorithm based method that automates the construction of local feature based composite class models to capture the salient characteristics of configuration variants of vehicle targets in SAR imagery and increase the performance of SAR recognition systems. The recognition models are based on quasi-invariant local features: SAR scattering center locations and magnitudes. The approach uses an efficient SAR recognition system as an evaluation function to determine the fitness of candidate members of a genetic population of new models and synthetically generates composite class models. Experimental results are given on the fitness of the composite models and the similarity of both the original training model configurations and the synthesized composite models to the test configurations. In addition, results are presented to show the SAR recognition performance and pose accuracy for training models and composite class models of configuration variants of MSTAR vehicle targets.
机译:本文重点研究一种基于遗传算法的方法,该方法可自动构建基于局部特征的复合类模型,以捕获SAR图像中车辆目标配置变体的显着特征,并提高SAR识别系统的性能。识别模型基于准不变的局部特征:SAR散射中心的位置和大小。该方法使用高效的SAR识别系统作为评估功能,以确定新模型的遗传种群候选成员的适应度,并综合生成复合类模型。在合成模型的适用性以及原始训练模型配置和合成的合成模型与测试配置的相似性方面给出了实验结果。此外,结果显示了MSTAR车辆目标配置变型的训练模型和复合类模型的SAR识别性能和姿态精度。

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