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Hyperspectral Image Compression Optimized for Spectral Unmixing

机译:针对光谱解混优化的高光谱图像压缩

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摘要

In this paper, we present a new lossy compression method for hyperspectral images that aims to optimally compress in both spatial and spectral domains and simultaneously minimizes the effect of the compression on linear spectral unmixing performance. To achieve this, a nonnegative Tucker decomposition is applied. This decomposition is a function of three dimension parameters. By employing a link between this decomposition and the linear spectral mixing model, an optimization problem is defined to find the optimal parameters by minimizing the root-mean-square error between the abundance matrices of the original and reconstructed data sets. The resulting optimization problem is solved by a particle swarm optimization algorithm. An approximate method for fast estimation of the free parameters is introduced as well. Our simulation results show that, in comparison with well-known state-of-the-art lossy compression methods, an improved compression and spectral unmixing performance of the reconstructed hyperspectral image is obtained. It is noteworthy to mention that the superiority of our method becomes more apparent as the compression ratio grows.
机译:在本文中,我们提出了一种用于高光谱图像的有损压缩新方法,旨在在空间和光谱域中进行最佳压缩,同时最大程度地减小压缩对线性光谱解混性能的影响。为此,应用了非负的塔克分解法。该分解是三维参数的函数。通过在分解和线性光谱混合模型之间建立联系,定义了一个优化问题,以通过最小化原始数据集和重构数据集的丰度矩阵之间的均方根误差来找到最佳参数。通过粒子群优化算法解决了由此产生的优化问题。还介绍了一种快速估计自由参数的近似方法。我们的仿真结果表明,与众所周知的最新有​​损压缩方法相比,重构的高光谱图像获得了改进的压缩和光谱解混性能。值得一提的是,随着压缩率的增加,我们方法的优势变得更加明显。

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