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首页> 外文期刊>International journal of remote sensing >Spectrally segmented principal component analysis of hyperspectral imagery for mapping invasive plant species
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Spectrally segmented principal component analysis of hyperspectral imagery for mapping invasive plant species

机译:高光谱图像的光谱分割主成分分析,用于绘制入侵植物物种

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摘要

Principal component analysis (PCA) is one of the most commonly adopted feature reduction techniques in remote sensing image analysis. However, it may overlook subtle but useful information if applied directly to the analysis of hyperspectral data, especially for discriminating between different vegetation types. In order to accurately map an invasive plant species (horse tamarind, Leucaena leucocephala) in southern Taiwan using Hyperion hyperspectral imagery, this study developed a spectrally segmented PCA based on the spectral characteristics of vegetation over different wavelength regions. The developed algorithm can not only reduce the dimensionality of hyperspectral imagery but also extracts helpful information for differentiating more effectively the target plant species from other vegetation types. Experiments conducted in this study demonstrated that the developed algorithm performs better than correlation-based segmented principal component transformation (SPCT) and conventional PCA (overall accuracy: 86%, 76%, 66%; kappa value: 0.81, 0.69, 0.57) in detecting the target plant species, as well as mapping other vegetation covers.
机译:主成分分析(PCA)是遥感影像分析中最常用的特征约简技术之一。但是,如果直接应用于高光谱数据的分析,尤其是区分不同植被类型,它可能会忽略微妙但有用的信息。为了使用Hyperion高光谱图像准确绘制台湾南部的入侵植物物种(马罗望子树,白头翁(Leucaena leucocephala)),本研究基于植被在不同波长区域的光谱特征,开发了光谱分割的PCA。所开发的算法不仅可以降低高光谱图像的维数,而且可以提取有用的信息,从而更有效地将目标植物物种与其他植被类型区分开。在这项研究中进行的实验表明,所开发的算法在检测方面比基于相关性的分段主成分变换(SPCT)和常规PCA(总体准确度:86%,76%,66%; kappa值:0.81、0.69、0.57)更好目标植物种类,以及绘制其他植被覆盖图。

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