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Super-resolution land cover mapping with indicator geostatistics

机译:具有指标地统计的超分辨率土地覆盖图

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Many satellite images have a coarser spatial resolution than the extent of land cover patterns on the ground, leading to mixed pixels whose composite spectral response consists of responses from multiple land cover classes. Spectral unmixing procedures only determine the fractions of such classes within a coarse pixel without locating them in space. Super-resolution or sub-pixel mapping-aims at providing a fine resolution map of class labels, one that displays realistic spatial structure (without artifact discontinuities) and reproduces the coarse resolution fractions. In this paper, existing approaches for super-resolution mapping are placed within an inverse problem framework, and a geostatistical method is proposed for generating alternative synthetic land cover maps at the fine (target) spatial resolution; these super-resolution realizations are consistent with all the information available. More precisely, indicator coKriging is used to approximate the probability that a pixel at the fine spatial resolution belongs to a particular class, given the coarse resolution fractions and (if available) a sparse set of class labels at some informed fine pixels. Such Kriging-derived probabilities are used in sequential indicator simulation to generate synthetic maps of class labels at the fine resolution pixels. This non-iterative and fast simulation procedure yields alternative super-resolution land cover maps that reproduce: (i) the observed coarse fractions, (ii) the fine resolution class labels that might be available, and (iii) the prior structural information encapsulated in a set of indicator variogram models at the fine resolution. A case study is provided to illustrate the proposed methodology using Landsat TM data from SE China.
机译:许多卫星图像的空间分辨率都比地面上的土地覆盖范围要大,导致混合像素的复合光谱响应由多个土地覆盖类别的响应组成。光谱解混过程仅确定粗像素内此类类别的分数,而无需将其定位在空间中。超分辨率或亚像素映射旨在提供类别标签的精细分辨率图,该类标签显示逼真的空间结构(无伪影不连续)并再现粗糙分辨率分数。本文将现有的超分辨率地图绘制方法放在一个反问题框架内,并提出了一种地统计方法,用于以精细(目标)空间分辨率生成替代的合成土地覆盖图。这些超分辨率实现与所有可用信息都是一致的。更准确地说,给定粗略的分辨率分数和(如果有的话)在某些已知的精细像素处具有稀疏的类别标签集的情况下,可以使用指示器coKriging近似估算处于精细空间分辨率的像素属于特定类别的概率。在顺序指示器模拟中使用此类Kriging衍生的概率,以在高分辨率像素处生成类标签的合成图。这种非迭代且快速的模拟过程可生成替代的超分辨率土地覆盖图,这些地图可再现:(i)观察到的粗糙部分,(ii)可能可用的精细分辨率类别标签,以及(iii)封装在其中的先前结构信息一组高分辨率的指标变异函数模型。提供了一个案例研究,以说明使用东南中国的Landsat TM数据提出的方法。

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