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Extraction of the vegetation fraction based on a Stepwise Spectral Mixture Analysis for the central and eastern area of Source Region of Yangtze, Yellow and Lantsang Rivers

机译:基于逐步谱混合分析的长江,黄河和澜沧江源区中东部植被提取

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摘要

Vegetation cover is an important parameter used in monitoring ecological changes of the source region of Yangtze, Yellow and Lantsang Rivers and understanding human activities. Thus, how to extract the large area's vegetation fraction quickly effectively is an open question. The traditional linear spectral mixture analysis (LSMA) assumes that the spectral reflectance is a mixture of several fixed endmember spectral values, which ignores considerable within-class variability. However, multiple endmember spectral mixture analysis (MESMA) overcomes the disadvantage by allowing the number and types to vary on a per-pixel basis. This paper proposes a stepwise spectral mixture analysis (SSMA) containing two steps of MESMA and adding the endmember fraction rationality rule in each step. The aim of the first step is to detect the pixels that didn't contain vegetation information at all and these pixels would be masked out. In the second step, MESMA is used to unmix the pixels only reserved in previous process. The results show that SSMA is more accurate than LSMA in extracting the vegetation fraction for the Three-Rivers. This means that SSMA is a good substitute for LSMA in studies on ecological changes. The concept of SSMA also can be applied for other large study areas.
机译:植被覆盖度是监测长江,黄河和澜沧江源区生态变化和了解人类活动的重要参数。因此,如何有效地快速提取大面积植被面积是一个悬而未决的问题。传统的线性光谱混合分析(LSMA)假设光谱反射率是几个固定端成员光谱值的混合,而忽略了类内的显着变化。但是,多端元光谱混合分析(MESMA)通过允许在每个像素的基础上改变数量和类型来克服该缺点。本文提出了包含两步MESMA的逐步光谱混合分析(SSMA),并在每一步中添加了端基组分合理性规则。第一步的目的是检测根本不包含植被信息的像素,这些像素将被掩盖。第二步,使用MESMA取消混合仅在先前过程中保留的像素。结果表明,SSMA比LSMA在提取三河植被分数方面更为准确。这意味着在生态变化研究中,SSMA可以很好地替代LSMA。 SSMA的概念也可以应用于其他大型研究领域。

著录项

  • 来源
  • 会议地点 Nanjing(CN)
  • 作者单位

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

    Department of Geographical Information Sciences ,School of Earth Sciences and Engineering,Hohai University ,Nanjing 210098;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 雷达;
  • 关键词

    the source region of yangtze; yellow and lantsang rivers; vegetation fraction; stepwise spectral mixture analysis (SSMA); endmember fraction rationality rule;

    机译:长江源区;黄河和澜沧江植被比例逐步光谱混合分析(SSMA);端元分数合理性规则;
  • 入库时间 2022-08-26 14:05:56

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