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Hyperspectral image compressed sensing via low-rank and joint-sparse matrix recovery

机译:通过低秩和联合稀疏矩阵恢复进行高光谱图像压缩感测

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We propose a novel approach to reconstruct Hyperspectral images from very few number of noisy compressive measurements. Our reconstruction approach is based on a convex minimization which penalizes both the nuclear norm and the ℓ2,1 mixed-norm of the data matrix. Thus, the solution tends to have a simultaneous low-rank and joint-sparse structure. We explain how these two assumptions fit Hyperspectral data, and by severals simulations we show that our proposed reconstruction scheme significantly enhances the state-of-the-art tradeoffs between the reconstruction error and the required number of CS measurements.
机译:我们提出了一种新颖的方法,可以从极少的噪声压缩测量中重建高光谱图像。我们的重建方法基于凸极小化,它同时惩罚了核范数和数据矩阵的12,1混合范数。因此,该解决方案趋向于同时具有低秩和联合稀疏结构。我们解释了这两个假设如何适合高光谱数据,并且通过多次仿真显示,我们提出的重建方案显着增强了重建误差与所需CS测量数量之间的最新折衷。

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