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首页> 外文期刊>International journal of remote sensing >Creation of a coastal evolution prognostic model using shoreline historical data and techniques of digital image processing in a GIS environment for generating future scenarios
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Creation of a coastal evolution prognostic model using shoreline historical data and techniques of digital image processing in a GIS environment for generating future scenarios

机译:使用海岸线历史数据和GIS环境中的数字图像处理技术创建海岸演变预测模型,以生成未来方案

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The process of coastal erosion is a global problem that impacts approximately 70% of coastal regions of the Earth. It causes loss of property, infrastructure, and biodiversity, besides generating major economic impacts. Therefore, the analysis and monitoring of coastal erosion is an issue that needs to be addressed. In this sense, remote-sensing data have been widely used in studies that evaluate the spatial and temporal changes of land use. In addition, the use of time series of satellite imagery applied in the investigation of changes in the Earth's coverage and its spatio-temporal pattern has been proven as an extremely efficient approach. Thus, remote sensing and geoprocessing are effective techniques to obtain continuous and dynamic information from coastal regions at different levels and scales. In this context, the main objective of this work was to create a prognostic model for the generation of future scenarios, based on the analysis of the spatial-temporal changes of the shorelines from past decades to the present, having as the pilot area the coast of the municipality of Icapui, in the State of Ceara, Northeastern Brazil. For that, Statistical Regression technique was used. In addition, the techniques of Digital Image Processing and the extraction of the modified normalized difference water index were used. As a result, the prognosis of coastal erosion was generated for the year 2021, based on the time series of the years 1985, 1991, 1997, 2003, 2009, and 2015. After the extrapolation process, the results were validated through the mean absolute error. Furthermore, through the Python programming language and the OpenCV library, a computational solution was implemented to be executed in a Geographic Information Systems environment that automated the process of generating future prognostic and the extraction of the shoreline in a shapefile format.
机译:海岸侵蚀的过程是一个全球性问题,影响着地球约70%的沿海地区。除了产生重大的经济影响外,它还造成财产,基础设施和生物多样性的损失。因此,海岸侵蚀的分析和监测是一个需要解决的问题。从这个意义上说,遥感数据已广泛用于评估土地利用的时空变化的研究中。此外,事实证明,将卫星图像的时间序列应用于调查地球覆盖范围及其时空模式的变化是一种非常有效的方法。因此,遥感和地理处理是从不同水平和规模的沿海地区获取连续和动态信息的有效技术。在这种情况下,这项工作的主要目的是在分析过去几十年到现在的海岸线时空变化的基础上,为未来情景的产生创建一个预测模型,并将沿海地区作为试点地区。巴西东北部塞阿拉州伊卡普伊市的总部。为此,使用了统计回归技术。此外,还使用了数字图像处理技术和经修正的归一化差水指数的提取。结果,根据1985、1991、1997、2003、2009和2015年的时间序列,得出了2021年的海岸侵蚀预后。在外推过程之后,通过平均绝对值对结果进行了验证。错误。此外,通过Python编程语言和OpenCV库,实现了在地理信息系统环境中执行的计算解决方案,该解决方案可自动生成形状文件格式的未来预测和海岸线提取过程。

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