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OpenCL-library-based Implementation of SCLSU Algorithm for Remotely Sensed Hyperspectral Data Exploitation: clMAGMA versus viennaCL

机译:基于OpenCL-Library的SCLSU算法实现远程感测的高光谱数据剥削:Clmagma与Viennacl

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In the last decade, hyperspectral spectral unmixing (HSU) analysis have been applied in many remote sensing applications. For this process, the linear mixture model (LMM) has been the most popular tool used to find pure spectral constituents or endmembers and their fractional abundance in each pixel of the data set. The unmixing process consists of three stages: (i) estimation of the number of pure spectral signatures or endmembers, (ii) automatic identification of the estimated endmembers, and (iii) estimation of the fractional abundance of each endmember in each pixel of the scene. However, unmixing algorithms can be very expensive computationally, a fact that compromises their use in applications under real-time constraints. This is, mainly, due to the last two stages in the unmixing process, which are the most consuming ones. In this work, we propose parallel opencllibrary-based implementations of the sum-to-one constrained least squares unmixing (P-SCLSU) algorithm to estimate the per-pixel fractional abundances by using mathematical libraries such as clMAGMA or ViennaCL. To the best of our knowledge, this kind of analysis using OpenCL libraries have not been previously conducted in the hyperspectral imaging processing literature, and in our opinion it is very important in order to achieve efficient implementations using parallel routines. The efficacy of our proposed implementations is demonstrated through Monte Carlo simulations for real data experiments and using high performance computing (HPC) platforms such as commodity graphics processing units (GPUs).
机译:在过去十年中,高光谱光谱分离(HSU)分析已经在许多遥感应用施加。对于该过程,线性混合模型(LMM)一直用于查找纯光谱成分或端元和它们的丰度分数在所述数据集的每个像素中的最常用的工具。解混过程包括三个阶段:纯光谱特征或端元的数目(i)的估计,(ii)所述估计的端元的自动识别,以及(iii)分数丰度的每个端元的估计场景中的每个像素。然而,未混合的算法是非常昂贵的计算,进而损害其在实时约束的应用中使用的事实。这主要是由于在未混合过程的最后两个阶段,这是最耗时的。在这项工作中,我们提出的总和到一个约束最小二乘解混(P-SCLSU)算法通过使用数学库,如clMAGMA或ViennaCL来估计每个像素的分数丰度平行基于opencllibrary的实现。据我们所知,这种使用OpenCL的库分析以前没有的高光谱成像处理文献进行的,在我们看来,这才能达到使用并行程序高效的实现是非常重要的。我们提出的实施方式中的功效通过Monte Carlo模拟即时数据的实验和使用高性能计算(HPC)平台,例如商品图形处理单元(GPU)证实。

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