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Bayesian regularization in non-linear imaging: Reconstructions from experimental data in microwave tomography

机译:非线性成像中的贝叶斯正则化:从微波层析成像中的实验数据重建

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In this paper we investigate the robustness and the effectiveness of a microwave imaging technique, based on Bayesian estimation theory, for the reconstruction of dielectric profiles. The validation is conducted on real experimental data, the well-known “Marseille” dataset. Our statistical based inversion algorithm takes advantage of Bayesian regularization, which permits to invert a strongly non-linear model using a Markov Random Field as a-priori statistical model of the unknown image. Such choice leads to a robust and effective non-linear inversion method. An exhaustive analysis on the experimental data is also performed, in order to show the good performance of the method.
机译:在本文中,我们研究了基于贝叶斯估计理论的微波成像技术用于介电谱重建的鲁棒性和有效性。验证是基于真实的实验数据(即著名的“马赛”数据集)进行的。我们基于统计的反演算法利用贝叶斯正则化技术,该算法允许使用马尔可夫随机场作为未知图像的先验统计模型来反演强非线性模型。这种选择导致了鲁棒和有效的非线性反演方法。为了显示该方法的良好性能,还对实验数据进行了详尽的分析。

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