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Compressive spectral image reconstruction using deep prior and low-rank tensor representation

机译:使用深度和低级张量表示的压缩光谱图像重建

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摘要

Compressive spectral imaging (CSI) has emerged as an alternative spectral image acquisition technology, which reduces the number of measurements at the cost of requiring a recovery process. In general, the reconstruction methods are based on handcrafted priors used as regularizers in optimization algorithms or recent deep neural networks employed as an image generator to learn a non-linear mapping from the low-dimensional compressed measurements to the image space. However, these deep learning methods need many spectral images to obtain good performance. In this work, a deep recovery framework for CSI without training data is presented. The proposed method is based on the fact that the structure of some deep neural networks and an appropriated low-dimensional structure are sufficient to impose a structure of the underlying spectral image from CSI. We analyzed the low-dimensional structure via the Tucker representation, modeled in the first net layer. The proposed scheme is obtained by minimizing the '2-norm distance between the compressive measurements and the predicted measurements, and the desired recovered spectral image is formed just before the forward operator. Simulated and experimental results verify the effectiveness of the proposed method for the coded aperture snapshot spectral imaging. (C) 2021 Optical Society of America
机译:压缩光谱成像(CSI)是一种替代光谱图像采集技术,它以需要恢复过程为代价,减少了测量次数。一般来说,重建方法基于手工制作的先验知识,这些先验知识在优化算法中用作正则化器,或者最近用作图像生成器的深层神经网络,用于学习从低维压缩测量到图像空间的非线性映射。然而,这些深度学习方法需要许多光谱图像才能获得良好的性能。本文提出了一种无训练数据的CSI深度恢复框架。该方法基于这样一个事实:一些深层神经网络的结构和适当的低维结构足以施加来自CSI的底层光谱图像的结构。我们通过在第一个网络层建模的Tucker表示法分析了低维结构。该方案通过最小化压缩测量和预测测量之间的“2-范数距离”来获得,并且在正演算子之前形成所需的恢复光谱图像。仿真和实验结果验证了该方法对编码孔径快照光谱成像的有效性。(2021)美国光学学会

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  • 来源
    《Applied optics》 |2021年第14期|共11页
  • 作者单位

    Univ Ind Santander Dept Syst Engn Bucaramanga Colombia;

    Univ Ind Santander Dept Syst Engn Bucaramanga Colombia;

    Univ Ind Santander Dept Syst Engn Bucaramanga Colombia;

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  • 正文语种 eng
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