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Application of sparse prior in aperture synthesis radiometric imaging of extended radiation source

机译:稀疏先验在扩展辐射源孔径合成辐射成像中的应用

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Aimed at the extended source of earth thermal radiation scene, the sparse prior is extracted from the transform domain, and used in the statistical inversion approach (SIA) to deal with the inverse problem in aperture synthesis radiometric imaging of the extended source. As the transform basis, Laplace basis, Fourier basis and Daubechies wavelet basis are proposed to explore the implicit sparse prior about the extended source. For the SIA, the image inversion of aperture synthesis radiometers is recast as the statistical inference about the hyperparameters based the sparse prior in the transform domain, which can be automatically derived from an expectation maximization (EM) algorithm. The simulations show that the proposed SIA can improve the radiometric accuracy of the reconstructed image by introducing the sparse prior as compared to the traditional deterministic inversion approaches.
机译:针对地球热辐射场景的扩展源,从变换域中提取稀疏先验,并将其用于统计反演方法(SIA)中,以处理扩展源的孔径合成辐射成像中的逆问题。作为变换的基础,提出了Laplace基础,Fourier基础和Daubechies小波基础,以探索关于扩展源的隐式稀疏先验。对于SIA,将重绘孔径合成辐射计的图像反转,作为基于变换域中基于稀疏先验的超参数的统计推断,该统计推断可以自动从期望最大化(EM)算法得出。仿真结果表明,与传统的确定性反演方法相比,提出的SIA通过引入稀疏先验可以提高重建图像的辐射精度。

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