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On the Performance of Endmember Extraction Algorithms for Hypersepctral Image Analysis

机译:超光谱图像分析中端元提取算法的性能

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In this paper, we investigate the performance of an endmember extraction algorithm when it is implemented in different fashions. The implementation fashion is changed by the use of a dimensionality reduction process, parallel or sequential mode. This results in four different versions of a single algorithm. We take the Automatic Target Generation Process (ATGP) algorithm as a study case due to its excellent performance. The experimental results show that a dimensionality reduction process can not only reduce computational complexity but also improve performance by compacting useful information into a low-dimensional space; the parallel mode can provide better performance than the sequential mode with the increase of computational complexity. Instructive recommendations in the selection or implementation of endmember extraction algorithms for practical applications are provided.
机译:在本文中,我们研究了端成员提取算法以不同方式实现时的性能。通过使用降维过程(并行或顺序模式)可以更改实现方式。这样就产生了一个算法的四个不同版本。由于其出色的性能,我们将自动目标生成过程(ATGP)算法作为研究案例。实验结果表明,降维过程不仅可以减少计算复杂度,而且可以通过将有用信息压缩到低维空间中来提高性能。随着计算复杂度的增加,并行模式可以提供比顺序模式更好的性能。提供了针对实际应用选择或实现端成员提取算法的指导性建议。

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