基于投影追踪的降维

H. Safavi, Chein-I. Chang
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引用次数: 6

摘要

降维技术在高光谱图像处理中有着广泛的应用,如数据压缩、端元提取等。本文研究了基于投影寻踪(PP)的数据降维方法,其中开发了三种方法。一种方法是使用投影索引(PI)来生成可用于生成投影索引组件(pic)的投影向量。PP通常使用随机初始条件来生成pic,这是一种常见的做法。因此,当在不同时间或不同用户同时执行相同的PP时,得到的pic通常是不相同的。为了解决这一问题,提出了两种方法。一种是基于PI的优先级PP (PI- prpp),它使用PI作为标准,对任何成分分析(例如主成分分析(PCA)或独立成分分析)产生的pic进行优先级排序。另一种方法称为初始化驱动的PP (ID-PP),它指定了一组适当的初始条件,允许PP不仅以相同的顺序生成pic,而且无论PP运行多少次或由谁运行PP,都可以生成相同的pic。
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Projection pursuit-based dimensionality reduction
Dimensionality Reduction (DR) has found many applications in hyperspectral image processing, e.g., data compression, endmember extraction. This paper investigates Projection Pursuit (PP)-based data dimensionality reduction where three approaches are developed. One is to use a Projection Index (PI) to produce projection vectors that can be used to generate Projection Index Components (PICs). It is a common practice that PP generally uses random initial conditions to produce PICs. As a result, when the same PP is performed in different times or different users at the same time, the resulting PICs are generally not the same. In order to resolve this issue, two approaches are proposed. One is referred to as PI-based PRioritized PP (PI-PRPP) which uses a PI as a criterion to prioritize PICs that are produced by any component analysis, for example, Principal Components Analysis (PCA) or Independent Component Analysis. The other approach is called Initialization-Driven PP (ID-PP) which specifies an appropriate set of initial conditions that allows PP to not only produce PICs in the same order but also the same PICs regardless of how many times PP is run or who runs the PP.
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