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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Building an exposed soil composite processor (SCMaP) for mapping spatial and temporal characteristics of soils with Landsat imagery (1984–2014)
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Building an exposed soil composite processor (SCMaP) for mapping spatial and temporal characteristics of soils with Landsat imagery (1984–2014)

机译:建立一个暴露的土壤复合处理器(SCMAP),用于用Landsat Image映射土壤的空间和时间特征(1984-2014)

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AbstractSoil information with high spatial and temporal resolution is crucial to assess potential soil degradation and to achieve sustainable productivity and ultimately food security. The spatial resolution of existing soil maps can commonly be too coarse to account for local soil variations and owing to the cost and resource needs required to update information these maps lack temporal information. With improved computational processing capabilities, increased data storage and most recently, the increasing amount of freely available data (e.g. Landsat, Sentinel-2A/B), remote sensing imagery can be integrated into existing soil mapping approaches to increase temporal and spatial resolution of soil information. Satellite multi-temporal data allows for generating cloud-free, radiometrically and phenologically consistent pixel based image composites of regional scale. Such data sets are of particular use for extracting soil information in areas of intermediate climate where soils are rarely exposed. The Soil Composite Mapping Processor (SCMaP) is a new approach designed to make use of per-pixel compositing to overcome the issue of limited soil exposure. The objective of this paper is to demonstrate the automated processors ability to handle large image databases to build multispectral reflectance composite base data layers that can support large scale top soil analyses. The functionality of the SCMaP is demonstrated using Landsat imagery over Germany from 1984 to 2014 applied over 5year periods. Three primary product levels are generated that will allow for a long term assessment and distribution of soils that include the distribution of exposed soils, a statistical information
机译:<![cdata [ 抽象 具有高空间和时间分辨率的土壤信息对于评估潜在的土壤退化并实现可持续生产率和最终食物至关重要。安全。现有土壤图的空间分辨率通常太粗糙,无法考虑本地土壤变化,并且由于更新信息所需的成本和资源需求,这些地图缺乏时间信息。通过改进的计算处理能力,增加数据存储和最近,可自由的数据量增加(例如Landsat,Sentinel-2a / b),遥感图像可以集成到现有的土壤映射方法中,以增加土壤的时间和空间分辨率信息。卫星多时间数据允许产生基于云,无线测量和基于的区域尺度的图像复合材料。这种数据集特别用于提取中间气候区域中的土壤信息,其中土壤很少暴露。土壤复合映射处理器(SCMAP)是一种新方法,旨在利用每像素合成来克服有限土壤暴露的问题。本文的目的是展示自动处理器能够处理大图像数据库以构建可以支持大规模顶部土壤分析的多光谱反射复合基础数据层。使用1984年至2014年施用德国的Landsat Imagery应用SCMAP的功能。产生三个主要产品水平,将允许长期评估和分布包括暴露土壤的分布,统计信息

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