Snapshot hyperspectral imaging can capture the 3D hyperspectral image (HSI) with a single 2D measurement and has attracted increasing attention recently. Recovering the underlying HSI from the compressive measurement is an ill-posed problem and exploiting the image prior is essential for solving this ill-posed problem. However, existing reconstruction methods always start from modeling image prior with the 1D vector or 2D matrix and cannot fully exploit the structurally spectral-spatial nature in 3D HSI, thus leading to a poor fidelity. In this paper, we propose an effective high-order tensor optimization based method to boost the reconstruction fidelity for snapshot hyperspectral imaging. We first build high-order tensors by exploiting the spatial-spectral correlation in HSI. Then, we propose a weight high-order singular value regularization (WHOSVR) based low-rank tensor recovery model to characterize the structure prior of HSI. By integrating the structure prior in WHOSVR with the system imaging process, we develop an optimization framework for HSI reconstruction, which is finally solved via the alternating minimization algorithm. Extensive experiments implemented on two representative systems demonstrate that our method outperforms state-of-the-art methods.
翻译:超光速超光谱成像可以通过单一 2D 测量来捕捉3D超光谱图像(HSI),这在近期引起越来越多的注意。从压缩测量中恢复基本的HSI是一个不恰当的问题,而利用图像是解决这一不正确问题的关键。然而,现有的重建方法总是从1D矢量或2D矩阵之前的建模图像开始,不能充分利用3D HSI的结构光谱空间性质,从而导致不忠实。在本文中,我们提议了一种有效的高阶高压优化法,以促进光谱成像的重建忠诚性。我们首先通过利用HSI的空间光谱相关关系来建立高阶高压。然后,我们提出一个基于低档量超光谱恢复模型来描述HSI之前的结构。我们通过将WHOSVR之前的结构与系统成像过程结合起来,为HSI重建开发了一个优化框架,通过移动最小度的最小度算法,最终通过两个具有代表性的系统进行大规模实验,展示了我们的方法。