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Block-Sparse Tensor Based Spatial-Spectral Joint Compression of Hyperspectral Images

机译:基于块稀疏张量的高光谱图像空间光谱联合压缩

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A hyperspectral image is represented as a three-dimensional tensor in this paper to realize the spatial-spectral joint compression. This avoids destroying the feature structure, as in the 2D compression model, the compression operation of the spatial and spectral information is separate. Dictionary learning algorithm is adopted to train three dictionaries on each mode and these dictionaries are applied to build the block-sparse model of hyperspectral image. Then, based on the Tucker Decomposition, the spatial and spectral information of the hyperspectral image is compressed simultaneously. Finally, the structural tensor reconstruction algorithm is utilized to recover the hyperspectral image and it significantly reduce the computational complexity in the block-sparse structure. The experimental results demonstrate that the proposed method is superior to other 3D compression models in terms of accuracy and efficiency.
机译:本文将高光谱图像表示为三维张量,以实现空间光谱联合压缩。这避免了破坏特征结构,因为在2D压缩模型中,空间和光谱信息的压缩操作是分开的。采用字典学习算法在每种模式下训练三个字典,并利用这些字典建立高光谱图像的块稀疏模型。然后,基于塔克分解,同时压缩高光谱图像的空间和光谱信息。最后,利用结构张量重建算法恢复高光谱图像,显着降低了块稀疏结构的计算复杂度。实验结果表明,该方法在准确性和效率上均优于其他3D压缩模型。

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