基于PCA和PP的航空高光谱遥感影像植被精细分类

Zhang Lianpeng, L. Qinhuo, Zhao Changsheng, Lin Hui, Sun Huasheng
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引用次数: 1

摘要

特征提取与降维是高光谱遥感图像处理中的核心问题之一。为了对植被进行详细分类,建立了一个投影指数。它描述了易混合分类植被对象的可分性。通过优化指标,可以计算出投影方向,且投影方向相互正交。将主成分方向与投影寻迹方向相结合,可以构造全数据空间的特征子空间。在特征子空间上完成分类。该策略有望提高分类精度,特别是易混合分类对象的分类精度。为了验证这一结论,在一幅航空高光谱图像上完成了分类实验,结果表明,该方法的总体分类精度提高了7%,易混合分类目标的分类精度提高了20%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The detailed vegetation classification for airborne hyperspectral remote sensing imagery by combining PCA and PP
The feature extraction and dimensionality reduction is one of the core problems in hyperspectral remote sensing imagery processing. For the detailed vegetation classification, a projection index is established. It describes the separability of easy mixed classified vegetation objects. By optimizing the index, the projection directions may be calculated and the directions are orthogonal each other. The feature subspace of full data space may be constructed by combining principal components directions and the projection pursuit directions. The classification is completed on the feature subspace. It is hopeful to increase the classification accuracy especially the accuracy of easy mixed classified objects by the strategy. To verify the conclusion, a classification experiment is completed on an airborne hyperspectral imagery, the result shows that the overall classification accuracy promote 7% and the accuracy of easy mixed classified objects promote more than 20%.
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