利用地球观测卫星遥感数据监测乌克兰西尔维斯松森林树木死亡率

IF 1.7 3区 农林科学 Q2 FORESTRY
O. Skydan, T. Fedoniuk, Оleksandr S. Mozharovskii, О. В. Zhukov, A. Zymaroieva, Viktor M. Pazych, Vitaliy V. Hurelia, T. Melnychuk
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引用次数: 3

摘要

本文考虑应用遥感数据解决乌克兰波利西亚地区的林业问题。结果表明,卫星遥感可用于监测病虫害对森林资源造成的损害,并可用于评估火灾的影响。在研究过程中,对Sentinel-2长期数据集的信息内容进行了详细的分析和优化,以检测波兰森林覆盖的变化,受害虫影响和火灾破坏。自动解密采用以下分类算法:最大似然法;未经训练的聚类分类;主成分分析;随机森林分类。本研究结果表明,尽管Sentinel-2的空间分辨率为十分制,但在林业和植被分析的应用问题中,Sentinel-2数据具有很高的应用潜力。我们提出的工作流程在Polissia地区实现了90%的总体分类精度,表明其可靠性和扩展到更高水平的潜力,并且提出的预测模型是平稳的,不依赖于时间参数。为了提高分类效果,在不同波段组合的测试中,强调了波段8与红边波段组合的重要性,以及其他分辨率为10m的波段对于夏季场景的重要性。红色边缘显示了光谱剖面中清晰可见的差异,但要获得良好的结果,分辨率更高的波段(10米)至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring tree mortality in Ukrainian Pinus sylvestris L. forests using remote sensing data from earth observing satellites
This article considers the application of remote sensing data to solve the problems of forestry in the Polissia zone (Ukraine). The satellite remote sensing was shown to be applicable to monitoring the damage caused by diseases and pests to forest resources and to assessing the effects of fires. During the research, a detailed analysis and optimization of the information content of Sentinel-2 long-term data sets was performed to detect changes in the forest cover of Polissia, affected by pests and damaged by fires. The following classification algorithms were used for automated decryption: the maximum likelihood method; cluster classification without training; Principal Component Analysis (PCA); Random Forest classification. The results of this study indicate the high potential of Sentinel-2 data for application in applied problems of forestry and vegetation analysis, despite the decametric spatial resolution. Our proposed workflow has achieved an overall classification accuracy of 90 % for the Polissia region, indicating its reliability and potential for scaling to a higher level, and the proposed forecast model is stationary and does not depend on time parameters. To improve the classification results, testing of different combinations of bands emphasized the importance of Band 8 in combination with red edge bands, as well as other bands with a resolution of 10 m for summer scenes. The red margin shows clearly visible differences in the spectral profiles, but bands with a higher resolution of 10 m were crucial for good results.
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来源期刊
CiteScore
2.20
自引率
11.10%
发文量
11
审稿时长
12 weeks
期刊介绍: Annals of Forest Research is a semestrial open access journal, which publishes research articles, research notes and critical review papers, exclusively in English, on topics dealing with forestry and environmental sciences. The journal promotes high scientific level articles, by following international editorial conventions and by applying a peer-review selection process.
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