We consider the inverse problem of determining the geometry of penetrable objects from scattering data generated by one incident wave at a fixed frequency. We first study an orthogonality sampling type method which is fast, simple to implement, and robust against noise in the data. This sampling method has a new imaging functional that is applicable to data measured in near field or far field regions. The resolution analysis of the imaging functional is analyzed where the explicit decay rate of the functional is established. A connection with the orthogonality sampling method by Potthast is also studied. The sampling method is then combined with a deep neural network to solve the inverse scattering problem. This combined method can be understood as a network using the image computed by the sampling method for the first layer and followed by the U-net architecture for the rest of the layers. The fast computation and the knowledge from the results of the sampling method help speed up the training of the network. The combination leads to a significant improvement in the reconstruction results initially obtained by the sampling method. The combined method is also able to invert some limited aperture experimental data without any additional transfer training.
翻译:我们考虑了从一个事件波以固定频率产生的散射数据中确定可穿透物体的几何学度的反面问题。 我们首先研究一个快速、简单且对数据中的噪音具有强力作用的正方位抽样类型方法。 这种抽样方法具有一种新的成像功能,适用于在近田或远田区域测得的数据。 在确定功能明显衰减率的地方,对成像功能的分辨率分析进行了分析。还研究了与Potthast 的正方位取样方法的连接。然后,将取样方法与深神经网络相结合,以解决反向散射问题。这种组合方法可以被理解为一个网络,使用第一层采样方法所计算的图像,然后由其余层的U-net结构所遵循。快速计算和从取样方法结果中获得的知识有助于加快网络的培训。这种组合可以使最初通过取样方法获得的重建结果得到重大改进。这种组合方法还可以将一些有限的孔径实验数据反转而无需任何额外的转移训练。