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首页> 外文期刊>Remote Sensing >Flood Monitoring Using Satellite-Based RGB Composite Imagery and Refractive Index Retrieval in Visible and Near-Infrared Bands
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Flood Monitoring Using Satellite-Based RGB Composite Imagery and Refractive Index Retrieval in Visible and Near-Infrared Bands

机译:使用基于卫星的RGB复合图像和可见光和近红外波段的折射率检索进行洪水监测

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Satellite remote sensing provides significant information for the monitoring of natural disasters. Recently, on a global scale, floods have been increasing both in frequency and in magnitude. In order to map the inundation area, flooding events are investigated using unique RGB composite imagery based on the MODIS surface reflectance (MOD09GA) data obtained from the Terra satellite, which is used to visualize and analyze these events. This study proposes using an RGB combination of MODIS band 6 (1.64 μm), band 5 (1.24 μm), and band 2 (0.86 μm) data from the visible and the near-infrared spectral ranges to map flood events. The flooding events that were investigated in this study occurred on 25 October 2015 along the Pampanga River in the Philippines, and on 28 July 2016 along the Poyang and Dongting Lakes in China. In the case of the Pampanga River, the inundated areas were estimated with surface reflectance (R) thresholds of 0.0 ≤ R 6 ≤ 0.102, 0.0 ≤ R 5 ≤ 0.138, and 0.03 ≤ R 2 ≤ 0.148 for MODIS bands 6, 5, and 2, respectively, which were determined using Otsu’s method. The total inundated area was estimated to be 487.75 km 2 . This estimate was indirectly compared with the results obtained from SENTINEL-1A Synthetic Aperture Radar (SAR) data. The total inundated area on 26 October 2015 for the case of the Pampanga River was estimated to be 486.37 km 2 using histogram analysis based on Otsu’s method. For the flooding case in China, the total estimated inundated area using MODIS RGB imagery on 28 July 2016 and SAR on 3 August 2016 was 1148.25 km 2 and 1110.096 km 2 , respectively. In addition, RGB imagery results using MODIS 6-5-2 bands were supported by the refractive index retrieval along the inundation area. A threshold of 1.6 for the real part of the complex refractive index allows for the discrimination between the flooded and non-flooded areas using the Hong and ASH approximations. This study shows that the RGB composite techniques using advanced sensors with more bands and higher spatio-temporal resolutions, and supported by the refractive index retrieval method, are useful for estimating flood events.
机译:卫星遥感为监测自然灾害提供了重要信息。最近,在全球范围内,洪水的频率和数量都在增加。为了绘制淹没区域的地图,基于从Terra卫星获得的MODIS表面反射率(MOD09GA)数据,使用独特的RGB复合图像对洪水事件进行了调查,该数据用于可视化和分析这些事件。这项研究建议使用可见光和近红外光谱范围的MODIS波段6(1.64μm),波段5(1.24μm)和波段2(0.86μm)数据的RGB组合来映射洪水事件。本研究中调查的洪水事件发生在2015年10月25日在菲律宾的邦板牙河上,以及2016年7月28日在中国的yang阳湖和洞庭湖上。以邦板牙河为例,对于MODIS波段6、5和5,估计的淹没区域的表面反射率(R)阈值为0.0≤R 6≤0.102、0.0≤R 5≤0.138和0.03≤R 2≤0.148。分别使用Otsu方法确定的2个。淹没的总面积估计为487.75 km 2。将该估计值与从SENTINEL-1A合成孔径雷达(SAR)数据获得的结果进行了间接比较。根据大津法的直方图分析,2015年10月26日,邦板牙河的总淹没面积估计为486.37 km 2。对于中国的洪灾案例,使用MODIS RGB图像(2016年7月28日)和SAR于2016年8月3日估算的淹没总面积分别为1148.25 km 2和1110.096 km 2。此外,沿淹没区域的折射率检索支持了使用MODIS 6-5-2波段的RGB图像结果。对于复数折射率的实部,阈值1.6允许使用Hong和ASH近似值区分水淹区域和非水淹区域。这项研究表明,使用具有更多波段和更高时空分辨率的先进传感器的RGB复合技术,并得到折射率检索方法的支持,对于估算洪水事件很有用。

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