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Comparing Sentinel-2 MSI and Landsat 8 OLI in soil salinity detection: a case study of agricultural lands in coastal North Carolina

机译:Sentinel-2 MSI和Landsat 8 OLI在土壤盐分检测中的比较:以北卡罗来纳州沿海的农田为例

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摘要

This study presents the first comparison of Landsat 8 Operational Land Imager (OLI) and Sentinel-2 Multispectral Instrument (MSI) in identifying soil salinity using soil physiochemical, spectral, statistical, and image analysis techniques. By the end of the century, intermediate sea level rise scenarios project approximately 1.3 meters of sea level rise along the coast of the southeastern United States. One of the most vulnerable areas is Hyde County, North Carolina, where 1140 km(2) of agricultural lands are being salinized, endangering 4,200 people and $40 million USD of property. To determine the best multispectral sensor to map the extent of salinization, this study compared the feasibility of OLI and MSI to estimate electrical conductivity (EC). The EC of field samples were correlated with handheld spectrometer spectra resampled into multispectral sensor bands. Using an iterative ordinary least squares regression, it was found that EC was sensitive to OLI bands 2 (452nm - 512nm) and 4 (636nm - 673nm) and MSI bands 2 (457.5nm - 522.5nm) and 4 (650nm - 680nm). Respectively, the R-Adj(2) and Root Mean Square Error (RMSE) of 0.04-0.54 and 1.15 for OLI, and 0.05-0.67 and 1.17 for MSI, suggests that the two sensors have similar salinity modelling skill. The extracted saline soils make up approximately 1,703hectares for OLI and 118hectares for MSI, indicating overestimation from the OLI image due to its coarser spatial resolution. Additionally, field samples indicate that nearby vegetated land is saline, indicating an underestimation of total impacted land. As sea levels rise, accurately monitoring soil salinization will be critical to protecting coastal agricultural lands. MSI's spatial and temporal resolution makes it superior to OLI for salinity tracking though they have roughly equivalent spectral resolutions. This study demonstrates that visible spectral bands are sensitive to soil salinity with the Blue and Red spectral ranges producing the highest model accuracy; however, the low accuracies for both sensors indicate the need of narrowband sensors. The HyspIRI to be launched in the early 2020s by NASA may provide ideal data source in soil salinity studies.
机译:这项研究提出了使用土壤物理化学,光谱,统计和图像分析技术对Landsat 8 Operational Land Imager(OLI)和Sentinel-2多光谱仪(MSI)进行土壤盐分鉴定的首次比较。到本世纪末,中等海平面上升情景预计将在美国东南部沿海地区海平面上升约1.3米。最易受伤害的地区之一是北卡罗来纳州的海德县,那里盐碱化的土地面积达1140公里(2),危及4,200万人和4000万美元的财产。为了确定最佳的多光谱传感器来绘制盐化程度,本研究比较了OLI和MSI估计电导率(EC)的可行性。现场样品的EC与手持式光谱仪光谱重新采样到多光谱传感器带中相关。使用迭代的普通最小二乘回归法,发现EC对OLI波段2(452nm-512nm)和4(636nm-673nm)和MSI波段2(457.5nm-522.5nm)和4(650nm-680nm)敏感。 R-Adj(2)和OLI的均方根误差(RMSE)为0.04-0.54和1.15,MSI的R-Adj(2)和均方根误差(RMSE)为0.0-0.67和1.17,表明这两个传感器具有相似的盐度建模技能。提取的盐渍土的OLI面积约为1,703公顷,MSI的土壤面积为118公顷,这表明由于OLI图像的空间分辨率较粗糙,因此高估了它。此外,野外采样表明附近的植被土地含盐,表明低估了总受影响土地。随着海平面上升,准确监测土壤盐碱化对保护沿海农田至关重要。 MSI的空间和时间分辨率使其在盐度跟踪方面优于OLI,尽管它们具有大致相同的光谱分辨率。这项研究表明可见光谱带对土壤盐分敏感,其中蓝色和红色光谱范围可产生最高的模型精度。但是,两个传感器的精度较低,表明需要窄带传感器。由美国国家航空航天局(NASA)于2020年代初发射的HyspIRI可能为土壤盐度研究提供理想的数据来源。

著录项

  • 来源
    《International journal of remote sensing》 |2019年第16期|6134-6153|共20页
  • 作者

    Davis E.; Wang C.; Dow K.;

  • 作者单位

    Univ South Carolina, Dept Geog, 709 Bull St, Columbia, SC 29201 USA;

    Univ South Carolina, Dept Geog, 709 Bull St, Columbia, SC 29201 USA;

    Univ South Carolina, Dept Geog, 709 Bull St, Columbia, SC 29201 USA;

  • 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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