Investigation of the impact of dimensionality reduction and feature selection on the classification of hyperspectral EnMAP data

S. Keller, A. Braun, S. Hinz, M. Weinmann
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引用次数: 17

Abstract

In this paper, we address the classification of hyperspectral data which is comparable to the data acquired with the Environmental Mapping and Analysis Program (EnMAP) mission, a hyperspectral satellite mission supposed to be launched into space in the near future. While simulated EnMAP data has already been released, only relatively few studies have focused on investigating the performance of approaches for classifying such EnMAP data. Hence, in a recent paper, a contest for classifying EnMAP data has been initiated to foster research about possible exploitation strategies. Based on the dataset presented therein, we present a framework involving techniques of dimensionality reduction, feature selection and classification. We involve several classifiers for pixelwise classification based on different learning principles and investigate the impact of approaches for dimensionality reduction and feature selection on the classification results. The derived results clearly reveal the potential of respective techniques and provide the basis for further improvements in different research directions.
降维和特征选择对高光谱EnMAP数据分类的影响研究
在本文中,我们讨论了高光谱数据的分类,这些数据与环境测绘与分析计划(EnMAP)任务所获得的数据相比较,该任务是一个预计在不久的将来发射到太空的高光谱卫星任务。虽然模拟的EnMAP数据已经发布,但只有相对较少的研究侧重于调查对这种EnMAP数据进行分类的方法的性能。因此,在最近的一篇论文中,发起了对EnMAP数据进行分类的竞赛,以促进对可能的开发策略的研究。在此基础上,我们提出了一个涉及降维、特征选择和分类技术的框架。基于不同的学习原理,我们使用了几种分类器进行像素分类,并研究了降维和特征选择方法对分类结果的影响。所得结果清楚地揭示了各自技术的潜力,并为进一步改进不同的研究方向提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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