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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Compressive Hyperspectral Imaging via Approximate Message Passing
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Compressive Hyperspectral Imaging via Approximate Message Passing

机译:通过近似消息传递进行压缩高光谱成像

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摘要

We consider a compressive hyperspectral imaging reconstruction problem, where three-dimensional spatio-spectral information about a scene is sensed by a coded aperture snapshot spectral imager (CASSI). The CASSI imaging process can be modeled as suppressing three-dimensional coded and shifted voxels and projecting these onto a two-dimensional plane, such that the number of acquired measurements is greatly reduced. On the other hand, because the measurements are highly compressive, the reconstruction process becomes challenging. We previously proposed a compressive imaging reconstruction algorithm that is applied to two-dimensional images based on the approximate message passing (AMP) framework. AMP is an iterative algorithm that can be used in signal and image reconstruction by performing denoising at each iteration. We employed an adaptive Wiener filter as the image denoiser, and called our algorithm “AMP-Wiener.” In this paper, we extend AMP-Wiener to three-dimensional hyperspectral image reconstruction, and call it “AMP-3D-Wiener.” Applying the AMP framework to the CASSI system is challenging, because the matrix that models the CASSI system is highly sparse, and such a matrix is not suitable to AMP and makes it difficult for AMP to converge. Therefore, we modify the adaptive Wiener filter and employ a technique called damping to solve for the divergence issue of AMP. Our approach is applied in nature, and the numerical experiments show that AMP-3D-Wiener outperforms existing widely-used algorithms such as gradient projection for sparse reconstruction (GPSR) and two-step iterative shrinkage/thresholding (TwIST) given a similar amount of runtime. Moreover, in contrast to GPSR and TwIST, AMP-3D-Wiener need not tune any parameters, which simplifies the reconstruction process.
机译:我们考虑一个压缩的高光谱成像重建问题,其中有关场景的三维空间光谱信息由编码孔径快照光谱成像仪(CASSI)感测。可以将CASSI成像过程建模为抑制三维编码和移位的体素并将其投影到二维平面上,从而大大减少了获取的测量次数。另一方面,由于测量值具有很高的压缩性,因此重建过程将具有挑战性。我们先前提出了一种压缩成像重建算法,该算法基于近似消息传递(AMP)框架应用于二维图像。 AMP是一种迭代算法,可通过在每次迭代中执行降噪来用于信号和图像重建。我们采用了自适应Wiener滤波器作为图像降噪器,并将其算法称为“ AMP-Wiener”。在本文中,我们将AMP-Wiener扩展到三维高光谱图像重建,并将其称为“ AMP-3D-Wiener”。将AMP框架应用于CASSI系统具有挑战性,因为对CASSI系统进行建模的矩阵非常稀疏,并且这种矩阵不适合AMP,因此AMP难以收敛。因此,我们修改了自适应维纳滤波器,并采用了一种称为阻尼的技术来解决AMP的发散问题。我们的方法在自然界中得到了应用,数值实验表明,AMP-3D-Wiener在性能相似的情况下,性能优于现有的广泛使用的算法,例如用于稀疏重建(GPSR)的梯度投影和两步迭代收缩/阈值(TwIST)。运行。而且,与GPSR和TwIST相比,AMP-3D-Wiener无需调整任何参数,从而简化了重建过程。

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