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Microwave Imaging of Inhomogeneous Objects Based on Bayesian Compressed Sensing

机译:基于贝叶斯压缩感知的非均匀物体的微波成像

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To reconstruct sparsely distributed inhomogeneous objects, a Bayesian compressed sensing microwave imaging method based on Gauss prior is proposed. In the first order Born approximation, a sparse sensing model is established based on the electric field integral equation and the mesh discretization in the imaging region. The Bayesian probability density function based on the Gauss prior is constructed. The objective function is optimized by using the relevance vector machine method. The simulation imaging of multi-target and non-uniform target is studied, and the influence of noise is considered. The results show that the reconstruction results of Bayesian compressed sensing method based on Gauss prior are better than conjugate gradient iteration algorithm and orthogonal matching pursuit compressed sensing algorithm, which verify the effectiveness and robustness of the algorithm.
机译:为了重构稀疏分布的非均匀物体,提出了一种基于高斯先验的贝叶斯压缩传感微波成像方法。在一阶Born逼近中,基于电场积分方程和成像区域中的网格离散化建立了稀疏感测模型。构造了基于高斯先验的贝叶斯概率密度函数。通过使用相关向量机方法优化目标函数。研究了多目标和非均匀目标的仿真成像,并考虑了噪声的影响。结果表明,基于高斯先验的贝叶斯压缩感知方法的重建结果优于共轭梯度迭代算法和正交匹配追踪压缩感知算法,验证了该算法的有效性和鲁棒性。

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