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首页> 外文期刊>International journal of remote sensing >Analysis of multi-frequency and multi-polarization SAR data for wetland mapping in Hamoun-e-Hirmand wetland
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Analysis of multi-frequency and multi-polarization SAR data for wetland mapping in Hamoun-e-Hirmand wetland

机译:Hamoun-e-Hirmand湿地湿地制图的多频和多极化SAR数据分析

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摘要

The complex, dynamic and narrow boundaries between vegetation types make wetland mapping challenging. Hereafter the case study of the Hamoun-e-Hirmand wetland is considered by analysing eight Synthetic Aperture Radar (SAR) Images acquired in dry and wet periods with three wavelengths (X-band similar to 3 cm, C-band similar to 6 cm, and L-band similar to 25 cm), three polarizations (HH, VV and VH), and four incidence angles (22 degrees, 30 degrees, 34 degrees and 53 degrees). Then, the Support Vector Machine (SVM) classification method was applied to classify TerraSAR-X, Sentinel-1, and ALOS-PALSAR images. The final wetland land cover map was created by combining the classification results obtained from each sensor. In the case in question, results show that TerraSAR-X (X-band, HH-53 degrees) and Sentinel-1 data (C-band, W-34 degrees) were useful for determining the flooded vegetation area in the wet period. This is crucial for the conservation of water bird habitats since flooded vegetation is an ideal environment for the nesting and feeding of water birds. PALSAR data (L-band in both HH and VH polarizations, 30 degrees) were capable of separating the classes of vegetation density in the wetland. In the dry period, Sentinel-1 (VV and VH, 34 degrees) and TerraSAR-X (HH, 22 degrees and 53 degrees) had higher potential in land cover mapping than PALSAR (HH and VH, 30 degrees). Based on these results, Sentinel-1 in VV and VH provides the highest ability to discriminate between dry and green plants. TerraSAR-X is better for separating meadow and bare land. The results obtained in this paper can reduce the ambiguity in selecting satellite data for wetland studies. The results can also be used to produce more accurate data from satellite images and to facilitate wetland investigation, conservation and restoration.
机译:植被类型之间复杂,动态和狭窄的边界使湿地制图面临挑战。此后,通过分析在干燥和湿润时期获取的三种波长的三个合成孔径雷达(SAR)图像(X波段类似于3 cm,C波段类似于6 cm,和类似于25 cm的L波段),三个极化(HH,VV和VH)和四个入射角(22度,30度,34度和53度)。然后,使用支持向量机(SVM)分类方法对TerraSAR-X,Sentinel-1和ALOS-PALSAR图像进行分类。通过组合从每个传感器获得的分类结果,创建了最终的湿地覆盖图。在所讨论的情况下,结果表明TerraSAR-X(X波段,HH-53度)和Sentinel-1数据(C波段,W-34度)对于确定湿润时期的淹没植被面积很有用。这对于水鸟栖息地的保护至关重要,因为淹没的植被是水鸟筑巢和觅食的理想环境。 PALSAR数据(HH和VH极化均为30度的L波段)能够区分湿地中的植被密度类别。在干旱时期,Sentinel-1(VV和VH,34度)和TerraSAR-X(HH,22度和53度)比PALSAR(HH和VH,30度)具有更高的土地覆盖制图潜力。基于这些结果,VV和VH中的Sentinel-1提供了最高的区分干燥植物和绿色植物的能力。 TerraSAR-X更适合于分离草地和裸地。本文获得的结果可以减少为湿地研究选择卫星数据时的歧义。结果还可以用于从卫星图像中获得更准确的数据,并有助于湿地调查,保护和恢复。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第6期|2277-2302|共26页
  • 作者

  • 作者单位

    Univ Zabol Dept Nat Resources Zabol Iran;

    Univ Montpellier TETIS IRSTEA Montpellier France;

    Isfahan Univ Technol Dept Nat Resources Esfahan Iran;

    Univ Zabol Hamoun Int Wetland Res Inst Zabol Iran;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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