利用哨兵-2 图像自动提取水体的机器学习

V. Kashtan, V. Hnatushenko
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The process includes eight stages, starting with data download and using topographic maps to obtain basic information about the study area. Then, the process involved data pre-processing, which included calibrating the images, removing atmospheric noise, and enhancing contrast. Next, the EfficientNet-B0 architecture is applied to identify water features, facilitating optimal network width scaling, depth, and image resolution. ResNet blocks compress and expand channels. It allows for optimal connectivity of large-scale and multi-channel links across layers. After that, the Regional Proposal Network defines regions of interest (ROI), and ROI alignment ensures data homogeneity. The Fully connected layer helps in segmenting the regions, and the Fully connected network creates binary masks for accurate identification of water bodies. 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引用次数: 0

摘要

背景。鉴于环境和水问题日益严重,有必要改进自动提取和监测城市生态系统水体的方法。由于从卫星系统中获取了大量数据,高效自动提取水体的问题变得越来越重要。研究对象是利用机器学习方法从哨兵-2 光学卫星图像中自动提取的水体。目标。这项工作的目标是利用机器学习方法提高在数字光学卫星图像上提取水体边界过程的效率。方法。本文提出了一种在哨兵-2 数字光学卫星图像上划分水体边界的自动化信息技术。该过程包括八个阶段,首先是下载数据并使用地形图获取研究区域的基本信息。然后是数据预处理,包括校准图像、去除大气噪声和增强对比度。接着,应用 EfficientNet-B0 架构来识别水体特征,从而优化网络宽度缩放、深度和图像分辨率。ResNet 块可压缩和扩展通道。它允许跨层的大规模和多通道链接的最佳连接。然后,区域建议网络定义感兴趣区域(ROI),ROI 对齐确保数据的一致性。全连接层可帮助分割区域,全连接网络可创建二进制掩码以准确识别水体。该方法的最后一步是分析图像的空间和时间变化,以识别可能表明特定现象或事件的差异、变化和趋势。这种方法可以利用机器学习自动准确地识别卫星图像上的水体特征。成果。建议的技术通过 Python 软件开发实现。通过与水指数和 K-means 等现有方法进行比较分析,对该技术的准确性进行了评估,结果表明,在 2017 年至 2023 年期间,该技术具有很高的准确性(高达 98%)。考量实际分类与预测分类之间一致性的卡帕系数证实了我们方法的稳定性和可靠性,其值达到 0.96。结论实验证实了所建议的自动信息技术的有效性,我们建议将其用于沿海地区变化的研 究、沿海资源管理领域的决策以及土地利用。进一步研究的前景可能包括季节性变化的新方法,以及在选择和绘制水面图时的稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING FOR AUTOMATIC EXTRACTION OF WATER BODIES USING SENTINEL-2 IMAGERY
Context. Given the aggravation of environmental and water problems, there is a need to improve automated methods for extracting and monitoring water bodies in urban ecosystems. The problem of efficient and automated extraction of water bodies is becoming relevant given the large amount of data obtained from satellite systems. The object of study is water bodies that are automatically extracted from Sentinel-2 optical satellite images using machine learning methods. Objective. The goal of the work is to improve the efficiency of the process of extracting the boundaries of water bodies on digital optical satellite images by using machine learning methods. Method. The paper proposes an automated information technology for delineating the boundaries of water bodies on Sentinel-2 digital optical satellite images. The process includes eight stages, starting with data download and using topographic maps to obtain basic information about the study area. Then, the process involved data pre-processing, which included calibrating the images, removing atmospheric noise, and enhancing contrast. Next, the EfficientNet-B0 architecture is applied to identify water features, facilitating optimal network width scaling, depth, and image resolution. ResNet blocks compress and expand channels. It allows for optimal connectivity of large-scale and multi-channel links across layers. After that, the Regional Proposal Network defines regions of interest (ROI), and ROI alignment ensures data homogeneity. The Fully connected layer helps in segmenting the regions, and the Fully connected network creates binary masks for accurate identification of water bodies. The final step of the method is to analyze spatial and temporal changes in the images to identify differences, changes, and trends that may indicate specific phenomena or events. This approach allows automating and accurately identifying water features on satellite images using machine learning. Results. The implementation of the proposed technology is development through Python software development. An assessment of the technology’s accuracy, conducted through a comparative analysis with existing methods, such as water indices and K-means, confirms a high level of accuracy in the period from 2017 to 2023 (up to 98%). The Kappa coefficient, which considers the degree of consistency between the actual and predicted classification, confirms the stability and reliability of our approach, reaching a value of 0.96. Conclusions. The experiments confirm the effectiveness of the proposed automated information technology and allow us to recommend it for use in studies of changes in coastal areas, decision-making in the field of coastal resource management, and land use. Prospects for further research may include new methods that seasonal changes and provide robustness in the selection and mapping of water surfaces.
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