首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >GEOGRAPHICALLY WEIGHTED REGRESSION APPROACH FOR SHALLOW WATER DEPTH ESTIMATION USING MULTISPECTRAL SATELLITE IMAGERIES
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GEOGRAPHICALLY WEIGHTED REGRESSION APPROACH FOR SHALLOW WATER DEPTH ESTIMATION USING MULTISPECTRAL SATELLITE IMAGERIES

机译:使用多光谱卫星成像浅水深度估计的地理加权回归方法

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Shallow water depth is essential for coastal planning, monitoring, and research. Bathymetry data is mostly produced from hydrographic survey using echosounder. The generic result from those measurements is discrete values while the desired output is a continuous depth model. To fill the gaps in the sounding data, we use Satellite Derived Bathymetry (SDB) approach with Geographically Weighted Regression (GWR). This study aims to investigate the feasibility of GWR to model bathymetry of shallow water in the eastern part of Indonesia. We explore the correlation between the number of training data and the predicted result. Two different satellites images are used, namely: Sentinel-2A and Landsat 8 OLI/TIRS with 10 and 30 m resolutions respectively. For the experiment, in-situ data are set into training and validation in three different ratios. The model is developed using adaptive GWR approach in which the parameter of regression would adapt the local data set within different kernel sizes. Finally, we compute RMSE (Root Mean Square Error), R2, and TVU (Total Vertical Uncertainty) to assess the quality of our model. In general, Sentinel-2A produces more detailed information due to higher resolution than Landsat 8 OLI/TIRS. Sentinel-2A also obtains more accurate results based on RMSE values. The percentage number of the estimated depth that fulfils TVU requirements is up to 83%. These assessment quality results give us an insight that the SDB approach using GWR is promising. Thus, the GWR method may be able to provide an estimate of bathymetry for many coastal areas in Indonesia.
机译:浅水深度对于沿海规划,监测和研究至关重要。沐浴浴数据主要由使用eChosounder的水文调查制成。来自这些测量的通用结果是离散值,而期望的输出是连续深度模型。为了填补声音数据中的空白,我们使用地理上加权回归(GWR)使用卫星衍生的浴权(SDB)方法。本研究旨在探讨GWR到印度尼西亚东部浅水模型浴室的可行性。我们探讨培训数据数量与预测结果之间的相关性。使用两种不同的卫星图像,即:Sentinel-2a和Landsat 8 oli / tirs,分别有10和30米分辨率。对于实验,原位数据被设定为三种不同比例的培训和验证。该模型是使用自适应GWR方法开发的,其中回归参数将适应不同内核大小内的本地数据。最后,我们计算RMSE(均均方误差),R2和TVU(总垂直不确定性)来评估模型的质量。通常,Sentinel-2A由于Landsat 8 Oli / Tirs的分辨率更高,产生了更详细的信息。 Sentinel-2a还基于RMSE值获得更准确的结果。符合TVU要求的估计深度的百分比数高达83%。这些评估质量结果让我们了解使用GWR的SDB方法是有前途的。因此,GWR方法可以能够提供对印度尼西亚许多沿海地区的碱基测量。

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