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首页> 外文期刊>Computers & geosciences >DeepRivWidth: Deep learning based semantic segmentation approach for river identification and width measurement in SAR images of Coastal Karnataka
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DeepRivWidth: Deep learning based semantic segmentation approach for river identification and width measurement in SAR images of Coastal Karnataka

机译:Deeprivwidth:沿海Karnataka的SAR识别和宽度测量的深度学习语义分割方法

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摘要

River width is an essential parameter for studying the river's hydrological process and has been widely used to estimate the river discharge. The existing approaches to measuring river width are based on remotely sensed imagery such as MODIS, Landsat to identify the river, and then estimate the river width. In this work, an alternate approach for river width estimation is proposed using the under-explored modality Synthetic Aperture Radar (SAR) images. SAR, unlike the traditional electro-optical sensors, can penetrate the clouds and can be used to collect the data in all weather conditions and even during the night. In this work, the river identification process is manifested as a binary semantic segmentation task in SAR images. For this, two state of the art deep learning algorithms (U-Net, DeepLabV3+) are utilized for river identification and subsequent width measurement. The proposed approach (DeepRivWidth) is used to estimate the width of the river of the Mangalore–Udupi region of Coastal Karnataka (India). These rivers originate or pass through Western Ghats (UNESCO world heritage site), and the proposed river width measurement approach could provide critical input for ecologists besides assisting efficient water management of the region. The estimated width is compared with the manually measured width, and significant improvement in the accuracy was obtained compared to existing river width measurement approaches. Besides, the performance evaluation of semantic segmentation approaches for river identification on a publicly available dataset provides valuable insights into segmenting rivers in SAR images.
机译:河宽是研究河流水文过程的重要参数,并被广泛用于估计河流放电。现有的测量河宽方法是基于远程感测的图像,如Modis,Landsat识别河流,然后估计河宽度。在这项工作中,使用探索的模态合成孔径雷达(SAR)图像提出了一种易河宽估计方法。与传统的电光传感器不同,SAR可以渗透云,可用于收集所有天气条件下的数据,甚至在夜间。在这项工作中,河流识别过程显示为SAR图像中的二进制语义分段任务。为此,使用了两个最深入的深度学习算法(U-Net,DEEPLABV3 +)用于河识别和随后的宽度测量。该拟议的方法(Deeprivwidth)用于估计沿海卡纳塔克(印度)的曼加拉尔 - Udupi地区的河宽。这些河流源自或通过西部止步(联合国教科文组织世界遗产),并且除了协助该地区有效的水管理之外,建议的河流宽度测量方法可以为生态学家提供关键投入。将估计的宽度与手动测量的宽度进行比较,与现有河宽度测量方法相比,获得了精度的显着改善。此外,公共可用数据集河流识别的语义分割方法的性能评估为SAR图像中的分段河流提供了有价值的见解。

著录项

  • 来源
    《Computers & geosciences》 |2021年第9期|104805.1-104805.9|共9页
  • 作者单位

    Department of Electronics & Communication Engineering Manipal Institute of Technology Manipal Academy of Higher Education Manipal India;

    Department of Electronics & Communication Engineering Manipal Institute of Technology Manipal Academy of Higher Education Manipal India;

    Department of Information & Communication Engineering Manipal Institute of Technology Manipal Academy of Higher Education Manipal India;

    Department of Information & Communication Engineering Manipal Institute of Technology Manipal Academy of Higher Education Manipal India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Convolutional neural networks; River width measurement; Semantic segmentation; Synthetic Aperture Radar;

    机译:卷积神经网络;河宽度测量;语义分割;合成孔径雷达;

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