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Unsupervised hyperspectral image analysis with projection pursuit

机译:具有投影追踪的无监督高光谱图像分析

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摘要

Principal components analysis (PCA) is effective at compressing information in multivariate data sets by computing orthogonal projections that maximize the amount of data variance. Unfortunately, information content in hyperspectral images does not always coincide with such projections. The authors propose an application of projection pursuit (PP), which seeks to find a set of projections that are "interesting," in the sense that they deviate from the Gaussian distribution assumption. Once these projections are obtained, they can be used for image compression, segmentation, or enhancement for visual analysis. To find these projections, a two-step iterative process is followed where they first search for a projection that maximizes a projection index based on the information divergence of the projection's estimated probability distribution from the Gaussian distribution and then reduce the rank by projecting the data onto the subspace orthogonal to the previous projections. To calculate each projection, they use a simplified approach to maximizing the projection index, which does not require an optimization algorithm. It searches for a solution by obtaining a set of candidate projections from the data and choosing the one with the highest projection index. The effectiveness of this method is demonstrated through simulated examples as well as data from the hyperspectral digital imagery collection experiment (HYDICE) and the spatially enhanced broadband array spectrograph system (SEBASS).
机译:主成分分析(PCA)通过计算使数据差异量最大的正交投影,可以有效地压缩多变量数据集中的信息。不幸的是,高光谱图像中的信息内容并不总是与这样的投影一致。作者提出了一种投影追踪(PP)的应用,它试图找到一组“有趣的”投影,因为它们偏离了高斯分布假设。一旦获得这些投影,就可以将它们用于图像压缩,分割或增强以进行视觉分析。为了找到这些投影,需要执行两步迭代过程,在此过程中,他们首先根据投影的估计概率分布与高斯分布的信息差异,搜索使投影索引最大化的投影,然后通过将数据投影到高斯上来降低排名。与先前投影正交的子空间。为了计算每个投影,他们使用简化的方法来最大化投影索引,而无需优化算法。它通过从数据中获取一组候选投影并选择具有最高投影索引的投影来搜索解决方案。通过仿真示例以及来自高光谱数字图像采集实验(HYDICE)和空间增强宽带阵列光谱仪系统(SEBASS)的数据证明了该方法的有效性。

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