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Deriving Regional Crown Closure Using Spectral Mixture Analysis Based on Up-Scaling Endmember Extraction Approach and Validation

机译:基于扩展端元提取方法和验证的光谱混合分析得出区域冠冕封闭度

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摘要

This paper investigates the retrieval of forest crown closure (CC) from the Landsat Thematic Mapper (TM) data and aerial images with a linear spectral mixture analysis (SMA) method. Anshan is selected as the study area. Two endmember extraction methods were used in this paper: 1) traditional image-based method and 2) up-scaling method. (When we get the fractions of components from a coregistered 0.6-m spatial resolution image, the linear spectral mixture model is applied to unmix the TM image and obtain the required endmembers.) For both methods, four fraction images (sunlit canopy, shaded canopy, sunlit background, shaded background) were calculated by linear spectral mixture model and used to derive CC. Results showed that CC can be fitted best with sum of fractions of sunlit canopy and shaded canopy at S-shaped curve and the up-scaling endmember extraction method is better than traditional image-based endmember extraction method. Finally, the up-scaling endmember extraction method was used to map forest CC in Anshan forested region. The measured forest CC distribution map was used to validate the estimated map. Results show that the estimated CC and measured CC have little difference and the estimated CC is slightly lower. The majority of Anshan forest CC values were between 0.4 and 0.8.
机译:本文研究了使用线性光谱混合分析(SMA)方法从Landsat Thematic Mapper(TM)数据和航拍图像中检索林冠封闭(CC)的方法。鞍山被选为研究区域。本文使用了两种端成员提取方法:1)基于传统图像的方法和2)放大方法。 (当我们从共同配准的0.6米空间分辨率图像中获取组分的分数时,将使用线性光谱混合模型来分解TM图像并获得所需的端成员。)对于这两种方法,均使用四个分数图像(阳光顶篷,阴影顶篷) ,日光背景,阴影背景)通过线性光谱混合模型进行计算并用于得出CC。结果表明,CC可以很好地拟合S形曲线上的阳光冠层和阴影冠层的分数总和,并且按比例放大的端部成员提取方法优于传统的基于图像的端部成员提取方法。最后,采用放大的端元提取方法对鞍山林区森林CC进行了制图。测得的森林CC分布图用于验证估计图。结果表明,估计的CC和测得的CC差异很小,估计的CC略低。鞍山大部分森林CC值在0.4至0.8之间。

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