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Relaxed Low Tensor Train Rank Representation with Structural Smoothness for Hyperspectral Image Super-resolution

机译:轻松的低张力列车排名表示,具有高光谱图像超分辨率的结构光滑度

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摘要

We propose a super-resolution method for hyperspectral image (HSI) that utilizes relaxed low tensor train (TT) rank representation with structural smoothness in this paper. Nonlocal similarity is exploited by grouping the similar HSI cubes. The 4D tensor formed by similar cubes is highly low-rank. The good balanced matricisation scheme of TT and rational shrinkage strategy of log-sum norm motivated us to design the relaxed low TT rank regularization in the model. It can learn the spatial and spectral correlations hidden in these 4-D tensors. The structural smoothness is captured by the three-dimensional total variation (3DTV) regularization in the model. We solve our model via ADMM. Compared with existing state-of-art super-resolution approaches, quantitative and qualitative reconstruct results on typical HSI data indicate that our method is effective.
机译:我们提出了一种超细图像(HSI)的超分辨率方法,其利用本文的结构平滑度的松弛低张力列车(TT)等级表示。通过对类似的HSI多维数据集分组,利用非本体相似性。由类似立方体形成的4D张量是高度低等级的。 Logu-Sum Norm的TT和合理收缩策略的良好平衡的原始方案激励我们在模型中设计轻松的低TT级正则化。它可以学习隐藏在这些4-D张量的空间和光谱相关性。结构平滑度被模型中的三维总变化(3DTV)正则化捕获。我们通过ADMM解决我们的型号。与现有的最先进的超分辨率方法相比,典型的HSI数据上的定量和定性重建结果表明我们的方法是有效的。

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