首页> 外文期刊>Journal of Imaging Science >A viable end-member selection scheme for spectral unmixing of multispectral satellite imagery data
【24h】

A viable end-member selection scheme for spectral unmixing of multispectral satellite imagery data

机译:一种可行的终端成员选择方案,用于多光谱卫星图像数据的光谱分解

获取原文
获取原文并翻译 | 示例
       

摘要

An important process in remote sensing is spectral unmixing which is used to obtain a set of species concentration maps known as abundance images. Linear pixel unmixing, also known as linear mixture modeling, assumes that the spectral signature of each pixel vector is the linear combination of a limited set of fundamental spectral components known as end-members. Thus end-member selection is the crucial first step in the spectral unmixing process. A conveniently parameterized method for determining the appropriate set of end-members for a given set of multispectral images is proposed, The end-members are obtained from a thematic map generated from a modified ISODATA clustering procedure that uses the spectral angle criterion, instead of the common Euclidean distance criterion. The centroids of the compact and well-populated clusters are selected as candidate end-members. The advantages of this technique over common mathematical and manual end-member selection techniques are, (1)the resulting end-members correspond to physically identifiable, and likely pure, species on the ground, (2) the residual error is relatively small, and (3) minimal human interaction time is required. The proposed spectral unmixing procedure was implemented in C and has been successfully applied to test imagery from various platforms including LANDSAT 5 MSS (79 m GSD) and NOAA's AVHRR(1.1 km GSD). [References: 15]
机译:遥感中的一个重要过程是光谱分解,该光谱分解用于获得一组被称为丰度图像的物种浓度图。线性像素分解,也称为线性混合建模,假定每个像素向量的光谱特征是一组有限的基本光谱成分(称为末端成员)的线性组合。因此,末端成员的选择是光谱解混过程中至关重要的第一步。提出了一种方便的参数化方法,用于为给定的多光谱图像集确定合适的端部成员集。这些端部成员是从专题图获得的,该专题图是从使用光谱角度准则的改良ISODATA聚类程序生成的,而不是常见的欧几里得距离准则。选择密集且分布良好的簇的质心作为候选末端成员。与普通的数学和手动端部选择技术相比,该技术的优势在于:(1)生成的端部成员对应于地面上可物理识别的,可能是纯净的物种;(2)残留误差相对较小;以及(3)需要最少的人机交互时间。拟议的光谱分解程序已在C语言中实现,并已成功应用于各种平台的图像测试,包括LANDSAT 5 MSS(79 m GSD)和NOAA的AVHRR(1.1 km GSD)。 [参考:15]

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号