Identification Of Affected High-Altitude Wetlands In The North Chile Using Large Landsat Time Series

D. Castillo, A. Russell, V. Caquilpan, S. Elgueta
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Abstract

High-Andean wetlands from northern Chile are considered worldwide biodiversity hot spots, however, they are subdued to high anthropic pressure. The monitoring of state variables, such as vegetation, allows to know the ecosystem’s global condition, which could be assessed by the analysis of spectral vegetation indices. The main goal of this paper was to detect changes in the high-Andean wetland vegetation, with remote sensing tools, to focalize surveillance efforts and the use of resources from environmental agencies. NDVI time series were constructed spanning from 1986 to 2019 based on Landsat data, which were analyzed based on the vegetation change detection using BFAST Monitor method. Detected changes were categorized to highlight certain types of changes that were considered more relevant. Wetlands were separated in two rankings (A and B) based on detected changes and territorial context. From 5,622 wetlands, 81 were categorized into group A and 510 into group B. One affected wetland was used as study case to assess the method’s efficiency, being able to detect changes and assign a relative importance to the case. It is shown that the proposed method has the capacity to detect vegetation degradation processes in high-Andean wetlands and could improve in the efficiency and effectiveness of the environmental agencies control labors over these ecosystems.
利用大Landsat时间序列识别智利北部受影响的高海拔湿地
智利北部的安第斯高原湿地被认为是世界生物多样性的热点,然而,它们受到高人为压力的抑制。通过对植被等状态变量的监测,可以了解生态系统的整体状况,并通过光谱植被指数分析对其进行评估。本文的主要目标是利用遥感工具检测安第斯高原湿地植被的变化,以集中监测工作和利用环境机构的资源。基于Landsat数据构建1986 - 2019年的NDVI时间序列,利用BFAST Monitor方法对植被变化进行检测分析。对检测到的更改进行分类,以突出显示被认为更相关的某些类型的更改。根据检测到的变化和地域背景,将湿地分为A级和B级。在5622个湿地中,81个被划分为A类,510个被划分为b类。一个受影响的湿地作为研究案例来评估该方法的效率,能够检测到变化并为案例分配相对重要性。研究结果表明,该方法具有监测高安第斯湿地植被退化过程的能力,可以提高环境机构对这些生态系统控制劳动的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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