首页> 外文期刊>Rangeland Ecology & Management >Spatial predictions of cover attributes of rangeland ecosystems using regression kriging and remote sensing.
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Spatial predictions of cover attributes of rangeland ecosystems using regression kriging and remote sensing.

机译:利用回归克里金法和遥感技术对牧场生态系统的覆盖属性进行空间预测。

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摘要

Sound rangeland management requires accurate information on rangeland condition over large landscapes. A commonly applied approach to making spatial predictions of attributes related to rangeland condition (e.g., shrub or bare ground cover) from remote sensing is via regression between field and remotely sensed data. This has worked well in some situations but has limited utility when correlations between field and image data are low and it does not take advantage of all information contained in the field data. I compared spatial predictions from generalized least-squares (GLS) regression to a geostatistical interpolator, regression kriging (RK), for three rangeland attributes (percent cover of shrubs, bare ground, and cheatgrass [Bromus tectorum L.]) in a southern Idaho study area. The RK technique combines GLS regression with spatial interpolation of the residuals to improve predictions of rangeland condition attributes over large landscapes. I employed a remote-sensing technique, object-based image analysis (OBIA), to segment Landsat 5 Thematic Mapper images into polygons (i.e., objects) because previous research has shown that OBIA yields higher image-to-field data correlations and can be used to select appropriate scales for analysis. Spatial dependence, the decrease in autocorrelation with increasing distance, was strongest for percent shrub cover (samples autocorrelated up to a distance [i.e., range] of 19 098 m) but present in all three variables (range of 12 646 m and 768 m for bare ground and cheatgrass cover, respectively). As a result, RK produced more accurate results than GLS regression alone for all three attributes when predicted versus observed values of each attribute were measured by leave-one-out cross validation. The results of RK could be used in assessments of rangeland conditions over large landscapes. The ability to create maps quantifying how prediction confidence changes with distance from field samples is a significant benefit of regression kriging and makes this approach suitable for landscape-level management planning.
机译:合理的牧场管理需要有关大景观牧场状况的准确信息。从遥感进行与牧场条件有关的属性(例如灌木或裸露的地面覆盖物)的属性的空间预测的常用方法是通过野外数据与遥感数据之间的回归。在某些情况下,此方法效果很好,但在田野数据和图像数据之间的相关性较低且没有利用田野数据中包含的所有信息的情况下,其实用性有限。我将广义最小二乘(GLS)回归与地统计插值器,回归克里格(RK)的空间预测对三种牧场属性(灌木,裸露地面和白茅草的覆盖率[ Bromus tectorum L 。])在爱达荷州南部的研究区。 RK技术将GLS回归与残差的空间插值相结合,以改善大景观上牧场条件属性的预测。我采用了一种基于对象的图像分析(OBIA)遥感技术,将Landsat 5 Thematic Mapper图像分割为多个多边形(即对象),因为先前的研究表明OBIA可以产生更高的图像到场数据相关性,并且可以用于选择适当的量表进行分析。空间相关性(自相关性随距离的增加而降低)对于灌木覆盖率(距离(即范围)为19 098 m的样品自相关)最强,但在所有三个变量(对于12646 m和768 m的范围)中都存在分别是裸露的地面和无盖草)。结果,当通过留一法交叉验证来测量每个属性的预测值与观察值时,RK所产生的所有三个属性都比单独的GLS回归更准确。 RK的结果可用于评估大景观的牧场状况。创建能够量化预测置信度如何随距现场样本的距离而变化的地图的功能,是回归克里金法的一项重要优势,并使该方法适用于景观级管理规划。

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