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Hyperspectral Image Compression and Reconstruction Based on Block-Sparse Dictionary Learning

机译:基于块稀疏字典学习的高光谱图像压缩和重建

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摘要

A large amount of hyperspectral image (HSI) data poses a significant challenge for transmission and storage. A new signal processing mechanism-compressed sensing (CS)-is appropriate for processing signals with a massive amount of data and can achieve high reconstruction accuracy. According to the structural properties of HSI, the same ground features show the same spectral properties. In this paper, an approach is proposed to compress and reconstruct HSI based on CS and block-sparse dictionary learning. Primarily, a dictionary of a given set of signal is trained and prior knowledge is not required on the association of the training dataset into groups. Then, a measurement matrix is used to compress an HSI cube to reduce the data volume of the signal. Finally, we use the trained block-sparse dictionary to reconstruct the image, along with the HSI feature classification information. Our experimental results showed that, for block-sparse HSI data, the proposed approach significantly improved the performance compared with other related state of the art methods.
机译:大量高光谱图像(HSI)数据对传输和存储构成了重大挑战。一种新的信号处理机制 - 压缩检测(CS) - 适用于处理具有大量数据的信号,并且可以实现高重建精度。根据HSI的结构性质,相同的地面特征显示出相同的光谱性能。在本文中,提出了一种基于CS和贫困字典学习来压缩和重建HSI的方法。主要是,训练给定的一组信号集的字典,并且在训练数据集的关联中不需要先验知识。然后,使用测量矩阵来压缩HSI立方体以降低信号的数据量。最后,我们使用训练的块稀疏字典来重建图像,以及HSI特征分类信息。我们的实验结果表明,对于块稀疏的HSI数据,所提出的方法与现有技术的其他相关状态相比显着改善了性能。

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