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首页> 外文期刊>Geomorphology >Cosmo-SkyMed and TerraSAR-X datasets for geomorphological mapping in the eastern of Marajo Island, Amazon coast
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Cosmo-SkyMed and TerraSAR-X datasets for geomorphological mapping in the eastern of Marajo Island, Amazon coast

机译:Cosmo-SkyMed和TerraSAR-X数据集,用于亚马逊海岸马拉霍岛东部的地貌制图

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摘要

The Amazon coast is marked by the high discharge of sediments and freshwater, macrotidal influence, a wide continental shelf, extensive flood plains and lowered plateaus which make it unique as a delta and estuary landscape. Further, the tropical climate imposes heavy rains and incessant cloudiness that render microwave systems more suitable for cartography. This study proposed to recognize and map the Amazon coastal environments through the X-band Synthetic Aperture Radar, provided by Cosmo-SkyMed (CSK) and TerraSAR-X (TSX) systems. The SAR datasets consisted of interferometric and stereo pairs, restricted to single-revisit and obtained with small interval (1-11 days), under steeper (theta < 35 degrees) and shallow (theta >= 35 degrees) incidence angles, and during the rainy and dry seasons. From the 4 acquisitions of X-band SAR data, attributes such as the backscattering coefficient, coefficient of variation, texture, coherence, and Digital Surface Model (DSM) were derived, adding each variable in 5 scenarios. These combinations resulted in 20 models, which were submitted individually to the machine learning (ML) classification approach by Random Forest (RF). The backscattering and altimetry described the coastal environments which shared ambiguity and high dispersion, with the lowest separability for vegetated environments such as Mangrove, Vegetated Coastal Plateau and Vegetated Fluvial Marine Terrace. The coherence provided by interferometry was weak (<0.44), even during the dry season, in the other hand, the cross-correlation was strong (>0.60), during the rainy and dry season showing more suitability for radargrammetry on the Amazon coast. The RF models resulted in Kappa coefficient between 0.39 to 0.70, indicating that the use of X-band SAR images at an incidence angle greater than 44 degrees and obtained in the dry season is more appropriated for the morphological mapping. The RF models given by TSX achieved the higher mapping accuracies per scenario of SAR products, in order of 0.48 to 0.63. Despite this, the best classification was carried out by 19 RF model with 0.70, provided by CSK in shallow incidence composed by intensity, texture, coherence and stereo DSM. The CSK and TSX data allowed to map the Amazon coast precisely, based on X-band at single polarization, high spatial resolution and revisit, which has demonstrated the support for detailed cartography scale (1:50,000) and frequent updating (monthly up to yearly). (C) 2019 Elsevier B.V. All rights reserved.
机译:亚马逊海岸的特点是大量沉积物和淡水,巨潮影响,宽阔的大陆架,宽泛的洪泛区和降低的高原地带,使其成为三角洲和河口景观的独特之处。此外,热带气候强降雨和持续多云,使微波系统更适合于制图。这项研究建议通过Cosmo-SkyMed(CSK)和TerraSAR-X(TSX)系统提供的X波段合成孔径雷达来识别和绘制亚马逊沿海环境。 SAR数据集由干涉和立体对组成,仅限于单次重访,并在较小的入射角(θ<35度)和浅入射角(θ> = 35度)下以及在雨季和旱季。从X波段SAR数据的4次采集中,得出了诸如后向散射系数,变异系数,纹理,相干性和数字表面模型(DSM)之类的属性,并在5种情况下添加了每个变量。这些组合产生了20个模型,由随机森林(RF)分别提交给机器学习(ML)分类方法。反向散射和测高仪描述了歧义和高度分散的沿海环境,对于植被环境(如红树林,植被沿海高原和植被河岸阶地)的可分离性最低。干涉测量法提供的相干性很弱(<0.44),即使在干旱季节也是如此,互相关性很强(> 0.60),在雨季和干旱季节显示出对亚马逊沿岸的雷达测量更加适合。 RF模型得出的Kappa系数在0.39至0.70之间,表明使用在干旱季节获得的入射角大于44度的X波段SAR图像更适合进行形态学制图。 TSX给出的RF模型在SAR产品的每种情况下均实现了较高的映射精度,约为0.48至0.63。尽管如此,最好的分类还是由CSK在强度,纹理,相干性和立体DSM组成的浅入射角下以0.70的19 RF模型进行的。 CSK和TSX数据允许基于单极化X波段,高空间分辨率和再访问来精确绘制亚马逊海岸地图,这表明它支持详细的制图比例尺(1:50,000)和频繁更新(每月至每年更新) )。 (C)2019 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Geomorphology》 |2020年第1期|106934.1-106934.16|共16页
  • 作者

  • 作者单位

    Reg Ctr Belem CENSIPAM CR Belem Amazon Protect Syst Ave Julio Cesar 7060 BR-66617420 Belem Para Brazil|Sao Paulo State Univ Unesp Sch Technol & Sci Rua Roberto Simonsen 305 BR-19060900 Presidente Prudente SP Brazil;

    Sao Paulo State Univ Unesp Sch Technol & Sci Rua Roberto Simonsen 305 BR-19060900 Presidente Prudente SP Brazil;

    Amazon Reg Ctr INPE CRA Natl Inst Space Res Parque Ciencia & Tecnol Guama 2651 BR-66077830 Belem Para Brazil;

    Fed Univ Para Geosci Inst UFPA IG Rua Augusto Correa 01 BR-66075110 Belem Para Brazil;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Synthetic aperture radar; Amazon coastal environments; Random Forest;

    机译:合成孔径雷达;亚马逊沿海环境;随机森林;

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