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Performance modeling of feature-based classification in SAR imagery

机译:特征基于特征的分类性能建模

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We present a novel method for modeling the performance of a vote-based approach for target classification in SAR imagery. In this approach, the geometric locations of the scattering centers are used to represent 2D model views of a 3D target for a specific sensor under a given viewing condition (azimuth, depression and squint angles). Performance of such an approach is modeled in the presence of data uncertainty, occlusion, and clutter. The proposed method captures the structural similarity between model views, which plays an important role in determining the classification performance. In particular, performance would improve if the model views are dissimilar and vice versa. The method consists of the following steps. In the first step, given a bound on data uncertainty, model similarity is determined by finding feature correspondence in the space of relative translations between each pair of model views. In the second step, statistical analysis is carried out in the vote, occlusion and clutter space, in order to determine the probability of misclassifying each model view. In the third step, the misclassification probability is averaged for all model views to estimate the probability-of-correct- identification (PCI) plot as a function of occlusion and clutter rates. Validity of the method is demonstrated by comparing predicted PCI plots with ones that are obtained experimentally. Results are presented using both XPATCH and MSTAR SAR data.
机译:我们提出了一种模拟基于投票的绩效的新方法,以在SAR图像中进行目标分类的绩效。在这种方法中,散射中心的几何位置用于表示特定传感器的3D目标的2D模型视图,在给定的观看条件(方位角,凹陷和斜角)下。这种方法的性能是在数据不确定性,遮挡和杂波的存在下建模的。该方法捕获模型视图之间的结构相似性,在确定分类性能方面起着重要作用。特别是,如果模型视图是不同的,则性能会提高性能,反之亦然。该方法包括以下步骤。在第一步中,给定数据不确定性的绑定,通过在每对模型视图之间的相对翻译空间中查找特征对应来确定模型相似度。在第二步中,在投票,闭塞和杂波空间中进行统计分析,以确定错误分类每个模型视图的概率。在第三步中,对所有模型视图的平均概率对错误分类概率进行平均,以估计正确的识别(PCI)图作为遮挡和杂波速率的函数。通过将预测的PCI图与实验获得的预测的PCI图进行比较来证明该方法的有效性。使用Xpatch和MSTAR SAR数据呈现结果。

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