Independent Component Analysis for coastal water mapping using hyperspectral datasets

V. Karathanassi, P. Kolokoussis, Ioannidou Styliani
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引用次数: 3

Abstract

Independent Component Analysis (ICA) is considered to be one of the most recent and successful ways to produce independent components out of the hyperspectral cube. The tool tries to resolve the Blind Source Separation (BSS) statistical problem and has been applied to various case studies of hyperspectral datasets, for dimensionality reduction and separation of independent signal sources, i.e. endmembers. Many ICA algorithms have been proposed in the literature. In this study, the FastICA, JADE, BSS SVD, SONS, NG-OL, and SIMBEC algorithms were applied on airborne hyperspectral data for coastal water mapping. Emphasis was given on water turbidity. In order to enforce the capacities of FastICA, a methodology including the eigen-thresholding Harsanyi-Farrand-Chang noise suppression technique, as well as, three-level Discrete Wavelet Transform (DWT) was developed. Results were compared and evaluated with in situ measurements related to turbidity. ICA algorithms produced quite interesting results. The BSS SVD algorithm was proven the most efficient tool for coastal water mapping.
利用高光谱数据集进行沿海水域制图的独立分量分析
独立分量分析(ICA)被认为是最新和最成功的从高光谱立方体中产生独立分量的方法之一。该工具试图解决盲源分离(BSS)统计问题,并已应用于高光谱数据集的各种案例研究,用于降维和分离独立信号源,即端元。文献中已经提出了许多ICA算法。本研究将FastICA、JADE、BSS SVD、SONS、NG-OL和SIMBEC算法应用于航空高光谱数据的沿海水域制图。重点讨论了水的浊度。为了加强FastICA的能力,开发了一种包括特征阈值法Harsanyi-Farrand-Chang噪声抑制技术和三电平离散小波变换(DWT)的方法。结果与浊度相关的原位测量进行了比较和评估。ICA算法产生了非常有趣的结果。BSS SVD算法被证明是最有效的沿海水域制图工具。
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