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一种用于生态站点高分辨率制图的超时间遥感协议。

A hyper-temporal remote sensing protocol for high-resolution mapping of ecological sites.

作者信息

Maynard Jonathan J, Karl Jason W

机构信息

USDA-ARS, Jornada Experimental Range, MSC 3JER, New Mexico State University, Las Cruces, NM, United States of America.

出版信息

PLoS One. 2017 Apr 17;12(4):e0175201. doi: 10.1371/journal.pone.0175201. eCollection 2017.

Abstract

Ecological site classification has emerged as a highly effective land management framework, but its utility at a regional scale has been limited due to the spatial ambiguity of ecological site locations in the U.S. or the absence of ecological site maps in other regions of the world. In response to these shortcomings, this study evaluated the use of hyper-temporal remote sensing (i.e., hundreds of images) for high spatial resolution mapping of ecological sites. We posit that hyper-temporal remote sensing can provide novel insights into the spatial variability of ecological sites by quantifying the temporal response of land surface spectral properties. This temporal response provides a spectral 'fingerprint' of the soil-vegetation-climate relationship which is central to the concept of ecological sites. Consequently, the main objective of this study was to predict the spatial distribution of ecological sites in a semi-arid rangeland using a 28-year time series of normalized difference vegetation index from Landsat TM 5 data and modeled using support vector machine classification. Results from this study show that support vector machine classification using hyper-temporal remote sensing imagery was effective in modeling ecological site classes, with a 62% correct classification. These results were compared to Gridded Soil Survey Geographic database and expert delineated maps of ecological sites which had a 51 and 89% correct classification, respectively. An analysis of the effects of ecological state on ecological site misclassifications revealed that sites in degraded states (e.g., shrub-dominated/shrubland and bare/annuals) had a higher rate of misclassification due to their close spectral similarity with other ecological sites. This study identified three important factors that need to be addressed to improve future model predictions: 1) sampling designs need to fully represent the range of both within class (i.e., states) and between class (i.e., ecological sites) spectral variability through time, 2) field sampling protocols that accurately characterize key soil properties (e.g., texture, depth) need to be adopted, and 3) additional environmental covariates (e.g. terrain attributes) need to be evaluated that may help further differentiate sites with similar spectral signals. Finally, the proposed hyper-temporal remote sensing framework may provide a standardized approach to evaluate and test our ecological site concepts through examining differences in vegetation dynamics in response to climatic variability and other drivers of land-use change. Results from this study demonstrate the efficacy of the hyper-temporal remote sensing approach for high resolution mapping of ecological sites, and highlights its utility in terms of reduced cost and time investment relative to traditional manual mapping approaches.

摘要

生态立地分类已成为一种高效的土地管理框架,但其在区域尺度上的效用一直有限,这是因为在美国生态立地位置存在空间模糊性,或者在世界其他地区缺乏生态立地地图。针对这些不足,本研究评估了利用超长时间序列遥感(即数百幅图像)进行生态立地的高空间分辨率制图。我们认为,超长时间序列遥感可以通过量化地表光谱特性的时间响应,为生态立地的空间变异性提供新的见解。这种时间响应提供了土壤-植被-气候关系的光谱“指纹”,而这是生态立地概念的核心。因此,本研究的主要目标是利用来自陆地卫星TM 5数据的28年归一化差异植被指数时间序列,并使用支持向量机分类进行建模,来预测半干旱牧场生态立地的空间分布。本研究结果表明,使用超长时间序列遥感影像的支持向量机分类在对生态立地类别进行建模方面是有效的,正确分类率为62%。这些结果与网格化土壤调查地理数据库以及专家划定的生态立地地图进行了比较,后者的正确分类率分别为51%和89%。对生态状态对生态立地误分类的影响进行分析后发现,处于退化状态的立地(如以灌木为主/灌木地和裸露/一年生植物地)由于其与其他生态立地光谱相似性高,误分类率较高。本研究确定了为改进未来模型预测需要解决的三个重要因素:1)采样设计需要通过时间充分代表类内(即状态)和类间(即生态立地)光谱变异性的范围,2)需要采用能够准确表征关键土壤特性(如质地、深度)的野外采样方案,3)需要评估额外的环境协变量(如地形属性),这可能有助于进一步区分具有相似光谱信号的立地。最后,所提出的超长时间序列遥感框架可能提供一种标准化方法,通过检查植被动态对气候变化和其他土地利用变化驱动因素的响应差异,来评估和检验我们的生态立地概念。本研究结果证明了超长时间序列遥感方法在生态立地高分辨率制图方面的有效性,并突出了其相对于传统手工制图方法在降低成本和时间投入方面的效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6767/5393606/149c1b8adca9/pone.0175201.g001.jpg

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