结合衍射层析成像的M-Net模型改进电磁逆散射

Ming Jin, Xi Rui Yang, C. Yang, M. Tong
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摘要

电磁逆散射是一个具有挑战性的问题,在许多科学和工程领域,包括雷达成像,医学成像和无损检测。逆散射的目标是从物体被入射波照射时产生的散射电磁波中恢复物体的特性。逆散射问题本身就很困难,因为不能直接测量物体的性质,只能观察到散射波。近年来,卷积神经网络(cnn)在解决逆散射问题方面显示出巨大的前景。U-Net模型是一种流行的CNN架构,已被用于解决广泛的图像处理和识别任务。然而,由于散射波数据中可用的信息有限,U-Net模型在处理复杂的逆散射问题时存在局限性。为了解决这一限制,我们提出了一种改进的U-Net模型,称为M-Net,它结合了多尺度特征和平均输出层,以提高重建的准确性和稳定性。M-Net模型由一个多尺度输入层、一个u形卷积神经网络和一个多尺度平均输出层组成。直接预测方法将散射场数据作为网络输入,可以大大减少人工计算工作量,但这种方法没有充分利用已知的物理先验信息,造成计算资源的浪费。因此,我们使用基于Born近似的衍射层析成像(衍射tomography, DT)图像作为网络输入,既保证了成像精度,又提高了计算效率。为了验证该方法的有效性,以目标介质为重构目标进行了仿真实验。结果表明,结合层析衍射算法的M-Net模型在求解电磁逆散射问题的精度和效率上都优于U-Net模型和其他现有的直接求解方法。误差分析进一步证明了M-Net模型结合层析衍射算法在复杂逆散射问题中的优越性能。
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Improved Electromagnetic Inverse Scattering with M-Net Model Incorporating Diffraction Tomography
Electromagnetic inverse scattering is a challenging problem in many areas of science and engineering, including radar imaging, medical imaging, and non-destructive testing. The goal of inverse scattering is to recover the properties of an object from the scattered electromagnetic waves that are generated when the object is illuminated with incident waves. The inverse scattering problem is inherently difficult because the properties of the object cannot be measured directly, and only the scattered waves can be observed. In recent years, convolutional neural networks (CNNs) have shown great promise in solving inverse scattering problems. The U-Net model is a popular CNN architecture that has been used to solve a wide range of image processing and recognition tasks. However, the U-Net model has limitations in dealing with complex inverse scattering problems due to the limited information available in the scattered wave data. To address this limitation, we propose an improved U-Net model called M-Net, which incorporates multi-scale features and a mean output layer to improve the accuracy and stability of the reconstruction. The M-Net model consists of a multi-scale input layer, a U-shape convolutional neural network, and a multi-scale mean output layer. Direct prediction methods take scattering field data as network input, which can greatly reduce the manual calculation workload, but this method does not make full use of known physical a priori information, resulting in a waste of computing resources. Therefore, we use diffraction tomography (DT) images based on Born approximation as the network input, which can ensure imaging accuracy and improve computational efficiency. In order to verify the effectiveness of the proposed method, a simulation experiment is carried out with a target medium as the reconstruction target. The results show that the M-Net model combined with the tomographic diffraction algorithm is superior to the U-Net model and other existing direct-solving methods in terms of accuracy and efficiency in solving the electromagnetic inverse scattering problems. The error analysis further proves the superior performance of the M-Net model combined with the tomographic diffraction algorithm in the complex inverse scattering problem.
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