利用 U-Net 卷积神经网络及其修改来分割卫星光学图像中的苔原湖泊

IF 0.9 Q4 OPTICS Atmospheric and Oceanic Optics Pub Date : 2024-07-03 DOI:10.1134/S1024856024700404
I. A. Abramova, D. M. Demchev, E. V. Kharyutkina, E. N. Savenkova, I. A. Sudakow
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摘要

摘要--冻原湖泊是气候变化的一个重要指标,因此对其面积的动态分析尤为重要。本文以 Landsat 数据为例,介绍了使用 U-Net 卷积神经网络对卫星光学图像中的冻原湖泊进行分割的结果。本文对原始 U-Net 设计及其修改版的分割精度进行了比较评估:U-Net++、Attention U-Net 和 R2 U-Net,包括使用来自预训练 VGG16 网络的权重。根据人工绘制西伯利亚北部苔原湖泊的结果,对分割准确性进行了评估。结果表明,最新的 U-Net 改进并不能显著提高分割精度,反而会增加计算成本。基于经典 U-Net 的配置在大多数情况下都能获得最佳结果(平均 Soerens 系数 IoU = 0.88)。所建议的技术和由此得出的估算结果可用于现代气候趋势分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Utilization of the U-Net Convolutional Neural Network and Its Modifications for Segmentation of Tundra Lakes in Satellite Optical Images

Tundra lakes are an important indicator of climate change; therefore, the analysis of the dynamics of their size is of particular interest. This paper presents the results of using the U-Net convolutional neural network for tundra lakes segmentation in satellite optical images using Landsat data as an example. The comparative assessment of segmentation accuracy is performed for the original U-Net design and its modifications: U-Net++, Attention U-Net, and R2 U-Net, including with weights derived from a pretrained VGG16 network. The segmentation accuracy is assessed based on the results of manual mapping of tundra lakes in northern Siberia. It is shown that more recent U-Net modifications do not provide a practically significant gain in segmentation accuracy, but increase the computational costs. A configuration based on the classic U-Net gives the best result in most cases (the average Soerens coefficient IoU = 0.88). The technique suggested and the resulting estimates can be used in analysis of modern climate trends.

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来源期刊
CiteScore
2.40
自引率
42.90%
发文量
84
期刊介绍: Atmospheric and Oceanic Optics  is an international peer reviewed journal that presents experimental and theoretical articles relevant to a wide range of problems of atmospheric and oceanic optics, ecology, and climate. The journal coverage includes: scattering and transfer of optical waves, spectroscopy of atmospheric gases, turbulent and nonlinear optical phenomena, adaptive optics, remote (ground-based, airborne, and spaceborne) sensing of the atmosphere and the surface, methods for solving of inverse problems, new equipment for optical investigations, development of computer programs and databases for optical studies. Thematic issues are devoted to the studies of atmospheric ozone, adaptive, nonlinear, and coherent optics, regional climate and environmental monitoring, and other subjects.
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