利用图像处理和深度学习技术从卫星图像中提取河流网络

Devang Jagdale, Sukrut Bidwai, Tejashvini R. Hiremath, Neil Bhutada, S. Bhingarkar
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引用次数: 0

摘要

由于各种各样的目的,人们对河网进行了广泛的观察和仔细检查,其中包括确定水体的陆地位置,检查河流的水位,预测河流流量,以及由于全球变暖而保护可持续能源资源。这些河流网络的提取是通过各种分割和机器学习模型集成来完成的。本文使用了来自Kaggle和谷歌Earth Engine的不同数据集,将图像分割、灰度化、增强、全局阈值化和深度学习UNet架构等分割方法与从卫星图像中提取河流网络的想法相结合,从而使所开发的UNet模型达到80.98%的dice score。因此,这些发展起来的技术可以进一步用于从卫星图像中提取河流。并可应用于各种语义分割检测数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of River Networks from Satellite Images using Image Processing & Deep Learning Techniques
River networks are widely observed and scrutinized for various purposes, which incorporate determining the terrestrial positions of water bodies, examining the gauge levels of the river, predicting river flows, and conserving sustainable energy resources as a consequence of Global warming. Extraction of these River networks on digital imagery systems are executed by various segmentation and machine learning model integration. In this paper, distinct datasets are used from Kaggle and Google Earth Engine, Segmentation methods such as Image segmentation, gray scaling, enhancement, global thresholding, and Deep Learning UNet Architecture are integrated with contemplation of extracting river networks from satellite images which result in achieving 80.98 % dice score for the developed UNet Model. Hence, these developed techniques can further be used for river extraction from satellite images. And can be applied to various semantic segmentation detection datasets.
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