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SPICE-Based SAR Tomography over Forest Areas Using a Small Number of P-Band Airborne F-SAR Images Characterized by Non-Uniformly Distributed Baselines

机译:基于少量基于非均匀分布基线的P波段机载F-SAR图像的森林区域基于SPICE的SAR层析成像

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Synthetic aperture radar tomography (TomoSAR) has been proven to be a useful way to reconstruct vertical structure over forest areas with P-band images, on account of its three-dimensional imaging ability. In the case of a small number of non-uniformly distributed acquisitions, compressive sensing (CS) is generally adopted in TomoSAR. However, the performance of CS depends on the selected hyperparameter, which is closely related to the noise of a pixel. In this paper, to overcome this limitation, we propose a sparse iterative covariance-based estimation (SPICE) approach based on the wavelet and orthogonal sparse basis (W&O-SPICE) for application over forest areas. SPICE is a sparse spectral estimation method that achieves a high vertical resolution, and takes account of the noise adaptively for each resolution cell. Thus, it does not require the user to select a hyperparameter. Furthermore, the used sparse basis not only ensures the sparsity of the forest canopy scattering contribution, but it can also keep the original sparse information of the ground contribution. The proposed method was tested in simulated experiments and the results demonstrated that W&O-SPICE can successfully reconstruct the vertical structure of a forest. Moreover, three P-band fully polarimetric airborne SAR images with non-uniformly distributed baselines were applied to reconstruct the vertical structure of a tropical forest in Mabounie, Gabon. The underlying topography and forest height were estimated, and the root-mean-square errors (RMSEs) were 6.40 m and 4.50 m with respect to the LiDAR digital terrain model (DTM) and canopy height model (CHM), respectively. In addition, W&O-SPICE showed a better performance than W&O-CS, beamforming, Capon, and the iterative adaptive approach (IAA).
机译:合成孔径雷达层析成像(TomoSAR)由于具有三维成像能力,已被证明是利用P波段图像在森林地区重建垂直结构的有用方法。对于少量非均匀分布的采集,在TomoSAR中通常采用压缩感测(CS)。但是,CS的性能取决于所选的超参数,该参数与像素的噪声密切相关。在本文中,为克服此限制,我们提出了一种基于小波和正交稀疏基础(W&O-SPICE)的稀疏迭代基于协方差的估计(SPICE)方法,以在森林区域中应用。 SPICE是一种稀疏的频谱估计方法,可实现较高的垂直分辨率,并针对每个分辨率单元自适应地考虑噪声。因此,它不需要用户选择超参数。此外,所使用的稀疏基础不仅可以确保森林冠层散射贡献的稀疏性,而且还可以保留原始的地面贡献稀疏信息。通过仿真实验验证了该方法的有效性,结果表明W&O-SPICE可以成功地重建森林的垂直结构。此外,应用了三个基线不均匀分布的P波段全极化机载SAR图像,以重建加蓬马布尼的热带森林的垂直结构。估计了基础地形和森林高度,相对于LiDAR数字地形模型(DTM)和树冠高度模型(CHM),均方根误差(RMSE)分别为6.40 m和4.50 m。此外,W&O-SPICE的性能优于W&O-CS,波束成形,Capon和迭代自适应方法(IAA)。

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