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Compression of Hyperspectral Scenes through Integer-to-Integer Spectral Graph Transforms ?

机译:通过整数到整数频谱图变换压缩高光谱场景?

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Hyperspectral images are depictions of scenes represented across many bands of the electromagnetic spectrum. The large size of these images as well as their unique structure requires the need for specialized data compression algorithms. The redundancies found between consecutive spectral components and within components themselves favor algorithms that exploit their particular structure. One novel technique with applications to hyperspectral compression is the use of spectral graph filterbanks such as the GraphBior transform, that leads to competitive results. Such existing graph based filterbank transforms do not yield integer coefficients, making them appropriate only for lossy image compression schemes. We propose here two integer-to-integer transforms that are used in the biorthogonal graph filterbanks for the purpose of the lossless compression of hyperspectral scenes. Firstly, by applying a Triangular Elementary Rectangular Matrix decomposition on GraphBior filters and secondly by adding rounding operations to the spectral graph lifting filters. We examine the merit of our contribution by testing its performance as a spatial transform on a corpus of hyperspectral images; and share our findings through a report and analysis of our results.
机译:高光谱图像是跨越电磁频谱的多个频带表示的场景的描述。这些图像的大尺寸及其独特的结构需要专门的数据压缩算法。在连续频谱成分之间以及成分本身内部发现的冗余有利于利用其特定结构的算法。一种应用于高光谱压缩的新颖技术是使用频谱图滤波器组(例如GraphBior变换),从而获得竞争性结果。这种现有的基于图的滤波器组变换不会产生整数系数,从而使其仅适用于有损图像压缩方案。我们在这里提出两个整数到整数的变换,这些变换用于双正交图滤波器组中,以实现对高光谱场景的无损压缩。首先,通过在GraphBior滤波器上应用三角基本矩形矩阵分解,其次,通过对频谱图提升滤波器添加舍入运算。我们通过测试其作为高光谱图像集上的空间变换的性能来检验我们贡献的优点;并通过报告和对结果的分析来分享我们的发现。

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