Super resolution for microwave imaging: A deep learning approach

P. Shah, M. Moghaddam
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引用次数: 30

Abstract

We propose a method to significantly improve the spatial resolution for microwave imaging. Conventional inverse methods for microwave imaging produce images at varying levels of resolution but none of them are at the resolution sufficiently fine to be useful for a complex real-world problem, mainly because of limited availability of independent measurements. We ease the problem by providing additional information through learning. We incorporate learning using a convolutional neural network in the second stage of our proposed two-staged approach, where the first stage is a non-linear inversion approach. Our method can be used with any conventional method and can boost the resolution in all dimensions. The applicability of our method is demonstrated for a 2D microwave imaging problem for an upscale factor of 3. The results show that the proposed method can produce a better detailed higher resolution image.
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微波成像的超分辨率:一种深度学习方法
提出了一种显著提高微波成像空间分辨率的方法。传统的微波成像逆方法产生不同分辨率的图像,但没有一种方法的分辨率足够精确,无法用于复杂的现实世界问题,主要是因为独立测量的可用性有限。我们通过学习提供额外的信息来缓解这个问题。在我们提出的两阶段方法的第二阶段中,我们将使用卷积神经网络进行学习,其中第一阶段是非线性反演方法。我们的方法可以与任何传统方法一起使用,并且可以在所有维度上提高分辨率。我们的方法的适用性证明了二维微波成像问题的高档系数为3。实验结果表明,该方法可以获得更精细、更高分辨率的图像。
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