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3D feature estimation for sparse, nonlinear bistatic SAR apertures

机译:稀疏,非线性双基地SAR孔径的3D特征估计

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We present an algorithm for extracting 3D canonical scattering features observed over sparse, bistatic SAR apertures. The input to the algorithm is a collection of noisy bistatic measurements which are, in general, collected over nonlinear flight paths. The output of the algorithm is a set of canonical scattering features that describe the 3D scene geometry. The algorithm employs a pragmatic approach to initializing feature estimates by first forming a 3D reflectivity reconstruction using sparsity-regularized least squares methods. Regions of high energy are detected in the reconstructions to obtain initial feature estimates. A single canonical feature, corresponding to a geometric shape primitive, is fit to each region via nonlinear optimization of fit error between the complex phase history data and parametric scattering models using a modification of the CLEAN method. Feature extraction results are presented for sparsely-sampled, nonlinear, 3D bistatic scattering prediction data of a simple scene.
机译:我们提出了一种用于提取在稀疏,双基地SAR孔径上观察到的3D典型散射特征的算法。该算法的输入是噪声双基地测量值的集合,这些噪声测量值通常是在非线性飞行路径上采集的。该算法的输出是一组描述3D场景几何的规范散射特征。该算法采用一种务实的方法来初始化特征估计,方法是首先使用稀疏性最小二乘方法形成3D反射率重建。在重建中检测高能量区域以获得初始特征估计。通过使用CLEAN方法的修改,通过复杂相位历史数据和参数散射模型之间的拟合误差的非线性优化,可以将对应于几何形状基元的单个规范特征拟合到每个区域。提出了针对简单场景的稀疏采样,非线性,3D双基地散射预测数据的特征提取结果。

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