基于线性混合模型的压缩光谱图像重构约束公式

Jorge Bacca, Héctor Vargas, H. Arguello
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引用次数: 6

摘要

最近的高光谱成像系统是基于压缩感知的思想构建的,以实现高效的采集。然而,传统的压缩高光谱成像重建模型计算复杂度较高。在这项工作中,压缩高光谱成像和解混相结合,以低复杂度的方案进行高光谱重建。压缩高光谱测量是用单像元光谱仪获得的。重构模型在低维空间中表示为线性混合模型。然后将高光谱重建制定为关于端元和丰度的非负矩阵分解问题,绕过涉及高光谱数据立方体本身的高复杂性任务。将基于交替最小二乘的估计策略与乘子交替方向法相结合,解决了非负矩阵分解问题。在真实数据的模拟采集中进行的实验表明,该方案的估计性能优于最先进的3dB重建算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A constrained formulation for compressive spectral image reconstruction using linear mixture models
Recent hyperspectral imaging systems are constructed on the idea of compressive sensing for efficient acquisition. However, the traditional reconstruction model in compressive hyperspectral imaging has a high computational complexity. In this work, compressive hyperspectral imaging and unmixing are combined for hyperspectral reconstruction in a low-complexity scheme. The compressed hyperspectral measurements are acquired with a single pixel spectrometer. The reconstruction model is represented in a space of lower dimension named linear mixture model. Hyperspectral reconstruction is then formulated as a nonnegative matrix factorization problem with respect to the endmembers and abundances, bypassing high-complexity tasks involving the hyperspectral data cube itself. The nonnegative matrix factorization problem is solved by combining an alternating least-squares based estimation strategy with the alternating direction method of multipliers. The estimated performance of the proposed scheme is illustrated in experiments conducted on a simulated acquisition in real data outperforming in 3dB the state-of-the-art reconstruction algorithms.
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