首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Retrieval of subpixel Tamarix canopy cover from Landsat data along the Forgotten River using linear and nonlinear spectral mixture models
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Retrieval of subpixel Tamarix canopy cover from Landsat data along the Forgotten River using linear and nonlinear spectral mixture models

机译:使用线性和非线性光谱混合模型从沿遗忘河的Landsat数据中提取亚像素Tamarix冠层覆盖

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Repeatable approaches for mapping saltcedar (Tamarix spp.) at regional scales, with the ability to detect low density stands, is crucial for the species' effective control and management, as well as for an improved understanding of its current and potential future dynamics. This study had the objective of testing subpixel classification techniques based on linear and nonlinear spectral mixture models in order to identify the best possible classification technique for repeatable mapping of saltcedar canopy cover along the Forgotten River reach of the Rio Grande. The suite of methods tested were meant to represent various levels of constraints imposed in the solution as well as varying levels of classification details (species level and landscape level), sources for endmembers (space-borne multispectral image, airborne hyperspectral image and in situ spectra measurements) and mixture modes (linear and nonlinear). A multiple scattering approximation (MSA) model was proposed as a means to represent canopy (image) reflectance spectra as a nonlinear combination of subcanopy (field) reflectance spectra. The accuracy of subpixel canopy cover was assessed through a 1-m spatial-resolution hyperspectral image and field measurements. Results indicated that: 1) When saltcedar was represented by one single image spectrum (endmember), the unconstrained linear spectral unmixing with post-classification normalization produced comparable accuracy (OA=72%) to those delivered by partially and fully constrained linear spectral unmixing (63-72%) and even by nonlinear spectral unmixing (73%). 2) The accuracy of the fully constrained linear spectral unmixing method increased (from 67% to 77%) when the classes were represented with several image spectra. 3) Saltcedar canopy reflectance showed the strongest nonlinear relationship with respect to subcanopy reflectance, as indicated through a range of estimated canopy recollision probabilities. 4) Despite the considerations of these effects on canopy reflectance, the inversion of the nonlinear spectral mixing model with subcanopy reflectance (field) measurements yielded slightly lower accuracy (73%) than the linear counterpart (77%). Implications of these results for region-wide monitoring of saltcedar invasion are also discussed.
机译:具有可检测低密度林分的能力的可重复方法,在区域范围内绘制盐杉(Tamarix spp。),对于该物种的有效控制和管理以及对物种当前和潜在的未来动态的更好理解至关重要。这项研究的目的是测试基于线性和非线性光谱混合模型的亚像素分类技术,以便为沿里奥格兰德河(Rio Grande)被遗忘的河床盖覆盖层的可重复绘制确定最佳分类技术。测试的方法套件旨在表示解决方案中施加的各种级别的约束,以及不同级别的分类详细信息(物种级别和景观级别),最终成员的来源(星载多光谱图像,机载高光谱图像和原位光谱)测量)和混合模式(线性和非线性)。提出了一种多重散射近似(MSA)模型,以将冠层(图像)反射光谱表示为亚冠层(场)反射光谱的非线性组合。通过1 m空间分辨率高光谱图像和野外测量评估亚像素冠层覆盖的准确性。结果表明:1)当Saltcedar由一个单一图像光谱(最终成员)表示时,无约束线性光谱解混合和分类后归一化所产生的准确度(OA = 72%)与部分和完全约束线性光谱解混合的准确度(OA = 72%)( 63-72%),甚至通过非线性光谱分解(73%)。 2)当类别由多个图像光谱表示时,完全约束线性光谱分解方法的准确性提高了(从67%到77%)。 3)如通过一系列估计的冠层再碰撞概率所表明的,Saltcedar冠层反射率相对于亚冠层反射率表现出最强的非线性关系。 4)尽管考虑了这些因素对冠层反射率的影响,但是使用亚冠层反射率(场)测量的非线性光谱混合模型的反演得出的准确度(73%)略低于线性对应物(77%)。还讨论了这些结果对盐杉入侵区域监测的意义。

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