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Comparison of Independent Component Analysis, Principal Component Analysis, and Minimum Noise Fraction Transformation for Tree Species Classification Using APEX Hyperspectral Imagery

机译:使用APEX高光谱图像对树种分类的独立分量分析,主成分分析和最小噪声分数转换的比较

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摘要

Hyperspectral imagery provides detailed spectral information that can be used for tree species discrimination. The aim of this study is to assess spectral⁻spatial complexity reduction techniques for tree species classification using an airborne prism experiment (APEX) hyperspectral image. The methodology comprised the following main steps: (1) preprocessing (removing noisy bands) and masking out non-forested areas; (2) applying dimensionality reduction techniques, namely, independent component analysis (ICA), principal component analysis (PCA), and minimum noise fraction transformation (MNF), and stacking the selected dimensionality-reduced (DR) components to create new data cubes; (3) super-pixel segmentation on the original image and on each of the dimensionality-reduced data cubes; (4) tree species classification using a random forest (RF) classifier; and (5) accuracy assessment. The results revealed that tree species classification using the APEX hyperspectral imagery and DR data cubes yielded good results (with an overall accuracy of 80% for the APEX imagery and an overall accuracy of more than 90% for the DR data cubes). Among the classification results of the DR data cubes, the ICA-transformed components performed best, followed by the MNF-transformed components and the PCA-transformed components. The best class performance (according to producer’s and user’s accuracy) belonged to Picea abies and Salix alba. The other classes (Populus x (hybrid), Alnus incana, Fraxinus excelsior, and Quercus robur) performed differently depending on the different DR data cubes used as the input to the RF classifier.
机译:高光谱图像提供可用于树种歧视详细的光谱信息。本研究的目的是评估使用机载棱镜实验(APEX)高光谱图像树种分类spectral⁻spatial复杂性降低的技术。该方法包括下列主要步骤:(1)预处理(去除噪声的频带)和屏蔽掉非森林地区; (2)将维数降低技术,即,独立分量分析(ICA),主成分分析(PCA),和最小噪声分离变换(MNF),和堆叠所选择的维数降低的(DR)组件来创建新的数据立方体; (3)对原始图像和在每个维度减小数据立方体的超象素分割; (4)树种使用随机森林(RF)分类器分类;和(5)的准确性的评估。结果表明使用APEX高光谱影像和DR数据多维数据集树种分类取得了良好的结果(对APEX图像和80%的总体精确度超过90%,为DR数据立方体的整体精度)。其中DR数据立方体的分类结果,在ICA变换部件表现最佳,其次是驻伊多国部队转化组件和PCA变换部件。最好的一流的性能(根据生产商和用户的精确度)属于欧洲云杉和白柳。其他类(杨x(混合),赤杨,欧洲白蜡树,和夏栎),这取决于用作输入到RF分类不同DR数据立方体进行不同。

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  • 作者

    Zahra Dabiri; Stefan Lang;

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  • 年度 2018
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  • 原文格式 PDF
  • 正文语种 eng
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