3维波数域成像处理方法对回波信号距离历程不做近似,成像重建精度高。机载下视阵列3D SAR跨航向阵列长度相比跨航向幅宽小很多,需将回波信号尺寸补零到成像场景尺寸以防止FFT时出现卷绕,过高的补零倍数给波数域成像处理带来内存需求和运算量的激增。如果能够仅对ROI(Region Of Interest)而非整个观测场景进行成像处理就能够极大程度降低补零倍数,提高该算法的时效性。该文提出的波数域快速成像方法首先在波传播-航迹向和波传播-跨航向完成两次2维成像处理,结合两次2维成像处理结果确定ROI,最后使用3维波数域算法对ROI进行3维精确重建。实验数据验证了该文算法的有效性。
Downward Looking Sparse Linear Array Three Dimensional SAR(DLSLA 3D SAR) is an important form of 3D SAR imaging, which has a widespread application field. Since its practical equivalent phase centers are usually distributed sparsely and nonuniformly, traditional 3D SAR algorithms suffer from low resolution and high sidelobes in cross-track dimension. To deal with this problem, this paper introduces a method based on back-projection and convex optimization to achieve 3D high accuracy imaging reconstruction. Compared with traditional SAR algorithms, the proposed method sufficiently utilizes the sparsity of the 3D SAR imaging scene and can achieve lower sidelobes and higher resolution in cross-track dimension. In the simulated experiments, the reconstructed results of both simple and complex imaging scene verify that the proposed method outperforms 3D back-projection algorithm and shows satisfying cross-track dimensional resolution and good robustness to noise.
Bao QianPeng XuemingWang YanpingTan WeixianHong Wen
A supervised polarimetric SAR land cover classification method was proposed based on the Fisher linear discriminant. The feature parameters used in this classification method could be se- lected flexibly according to land covers to be classified. Polarimetric and texture feature parameters extracted from co-registered multifrequency and multi-temporal polarimetric SAR data could be com- bined together for classification use, without consideration of the dimension difference of each fea- ture parameter and the joint probability density function of those parameters. Experimental result with AGRSAR L/C-band full polarimetric SAR data showed that a total classification accuracy of 94. 33% was achieved by combining the polarimetric with texture feature parameters extracted from L/C dual band SAR data, demonstrating the effectiveness of this method.