不同植被指数对Sentinel -2影像滑坡倾向性区分析的适宜性

IF 0.5 Q3 Earth and Planetary Sciences Boletim De Ciencias Geodesicas Pub Date : 2023-01-01 DOI:10.1590/s1982-21702023000300008
Lucilia do Carmo Giordano, Mara Lúcia Marques, Fábio Augusto Gomes Vieira Reis, Claudia Vanessa dos Santos Corrêa, Paulina Setti Riedel
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引用次数: 0

摘要

植被指数(VIs)提供了植被状态的空间信息,这些信息与滑坡倾向有关。为了评估VIs信息对滑坡倾向的指示作用,本研究分析了9种不同的VIs,以确定Pedra Branca水文盆地在滑坡事件发生前后的植被状态类别。使用Sentinel-2A(2016)和Sentinel-2B(2018)图像获得不同的VIs。通过交叉表分析检验各VIs识别滑坡伤痕计算面积的能力,并通过误差矩阵将VIs与参考NDVI进行比较,分析识别滑坡发生前植被状态的准确性。在2018年的图像中,滑坡疤痕区总面积为86700m²,NDVI匹配约57%的无植被类别。在滑坡事件发生前,2016年影像中除了RENDVI和ARVI外,几乎所有的VIs都显示植被活力丧失。此外,这些指数(异常MSI)在识别中期和旺盛植被状态方面也与NDVI分析具有较高的匹配率。然而,植被健康状态的区域减少,因此可能在滑坡事件发生之前就表明了滑坡事件的倾向。
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The suitability of different vegetation indices to analyses area with landslide propensity using Sentinel -2 Image
Vegetation Indices (VIs) provide spatial information on the vegetation state, which has been associated with landslide propensity. To evaluate how VIs information indicate the landslide propensity, the current study analyzed nine different IVs to identify the categories of vegetation states in the hydrographic basin of Pedra Branca before and after landslide event. The different VIs were obtained using Sentinel-2A (2016) and Sentinel-2B (2018) images. All VIs were tested by cross-table analysis regard to the ability to identify the calculated area for landslide scars, and the VIs were also compared to the NDVI reference by error matrix for the analysis of the accuracy in identifying the vegetation state before the landslide occurrence. The areas with landslide scars totalized 86700m² in 2018 image and NDVI matched ~57% of the No Vegetation category. Before the landslide event, almost all VIs indicated a loss of vegetation vigor (with exception of RENDVI and ARVI) in 2016 image. In addition, the indices (exceptionality MSI) also presented high rates of match to the analysis of NDVI in discerning both Intermediate and Vigorous Vegetation states. However, the areas presenting a healthy vegetation state are reduced, which therefore might be indicating the propensity to landslide event before their occurrences.
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来源期刊
Boletim De Ciencias Geodesicas
Boletim De Ciencias Geodesicas Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
1.70
自引率
20.00%
发文量
10
审稿时长
3 months
期刊介绍: The Boletim de Ciências Geodésicas publishes original papers in the area of Geodetic Sciences and correlated ones (Geodesy, Photogrammetry and Remote Sensing, Cartography and Geographic Information Systems). Submitted articles must be unpublished, and should not be under consideration for publication in any other journal. Previous publication of the paper in conference proceedings would not violate the originality requirements. Articles must be written preferably in English language.
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