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RivWidthCloud: An Automated Google Earth Engine Algorithm for River Width Extraction From Remotely Sensed Imagery

机译:RivwidthCloud:远程感测图像的河流宽度提取自动谷歌地球发动机算法

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The wetted width of a river is one of the most important hydraulic parameters that can be readily measured using remote sensing. Remotely sensed river widths are used to estimate key attributes of river systems, including changes in their surface area, channel storage, and discharge. Although several published algorithms automate river network and width extraction from remote sensing images, they are limited by only being able to run on local computers and do not automatically manage cloudy images as input. Here we present RivWidthCloud, a river width software package developed on the Google Earth Engine cloud computing platform. RivWidthCloud automatically extracts river centerline and widths from optical satellite images with the ability to flag observations that are obstructed by features like clouds, cloud shadows, and snow based on existing quality band classification. Because RivWidthCloud is built on a popular cloud computing platform, it allows users to easily apply the algorithm to the platform's vast archive of remote sensing images, thereby reducing the users' overhead for computing hardware and data storage. By comparing RivWidthCloud-derived widths from Landsat images to in situ widths from the U.S. and Canada, we show that RivWidthCloud can estimate widths with high accuracy (root mean square error: 99 m; mean absolute error: 43 m; mean bias: -21 m). By making RivWidthCloud publicly available, we anticipate that it will be used to address both river science questions and operational applications of water resource management.
机译:河流的湿润宽度是使用遥感可以容易地测量的最重要的液压参数之一。远程感测的河流宽度用于估计河流系统的关键属性,包括其表面积,通道存储和放电的变化。虽然几种公开的算法自动化河道网络和宽度提取遥感图像,但它们仅限于能够在本地计算机上运行,​​并且不会自动管理多云图像作为输入。在这里,我们在Google地球发动机云计算平台上开发的河宽软件包Rivwidthcloud。 Rivwidthcloud自动从光学卫星图像中自动提取河流中心线和宽度,其能够以云,云阴影和雪等特征为基于现有质量频带分类的观察。由于RIVWidthCloud建立在流行的云计算平台上,因此它允许用户轻松地将算法应用于平台的遥感图像的大量存档,从而减少了用于计算硬件和数据存储的用户开销。通过将来自Landsat图像的Rivthcloud派生宽度与来自美国和加拿大的原位宽度进行比较,我们表明RivwidthCloud可以高精度估计宽度(根均方误差:99米;平均值误差:43米;平均值:-21 m)。通过公开可用的Rivwidthcloud,我们预计它将用于解决河流科学问题和水资源管理的运营应用。

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