利用Sentinel 1雷达数据的多维特征监测热带地区的森林砍伐事件

IF 2.7 3区 农林科学 Q2 ECOLOGY
Chuanwu Zhao, Yaozhong Pan, Xiufang Zhu, Le Li, X. Xia, Shoujia Ren, Yuan Gao
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引用次数: 0

摘要

许多国家和地区目前正在制定新的森林战略,以更好地应对森林生态系统面临的挑战。及时准确地监测毁林事件对于指导热带森林管理活动是必要的。合成孔径雷达(SAR)对天气条件不太敏感,在多云地区的高频监测中发挥着重要作用。目前,大多数基于SAR图像的森林砍伐识别都使用人工监督的方法,这些方法依赖于高质量和充足的样本。在这项研究中,我们旨在探索对森林砍伐敏感的雷达特征,重点开发一种使用雷达多维特征自动提取森林砍伐事件的方法(称为3DC)。首先,我们分析了雷达后向散射强度(BI)、植被指数(VI)和偏振特征(PF)在区分森林砍伐地区和背景环境方面的有效性。其次,我们选择性能最好的雷达特征来构建多维特征空间模型,并使用无监督的K-均值聚类方法来识别森林砍伐区域。最后,采用定性和定量的方法对该方法的性能进行了验证。巴拉圭、巴西和墨西哥的研究结果表明:(1)3DC的总体准确率(OA)和F1评分(F1)分别为88.1–98.3%和90.2–98.5%。(2) 3DC在不需要样本的情况下实现了与监督方法类似的精度。(3) 3DC与全球森林变化(GFC)地图匹配良好,并提供了更详细的空间信息。此外,我们将3DC应用于巴拉圭的森林砍伐地图,发现森林砍伐事件主要发生在下半年。总之,3DC是监测热带森林砍伐事件的一种简单有效的方法,有望为森林砍伐后的森林恢复服务。这项研究对热带地区森林管理政策的制定和实施也很有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring of deforestation events in the tropics using multidimensional features of Sentinel 1 radar data
Many countries and regions are currently developing new forest strategies to better address the challenges facing forest ecosystems. Timely and accurate monitoring of deforestation events is necessary to guide tropical forest management activities. Synthetic aperture radar (SAR) is less susceptible to weather conditions and plays an important role in high-frequency monitoring in cloudy regions. Currently, most SAR image-based deforestation identification uses manually supervised methods, which rely on high quality and sufficient samples. In this study, we aim to explore radar features that are sensitive to deforestation, focusing on developing a method (named 3DC) to automatically extract deforestation events using radar multidimensional features. First, we analyzed the effectiveness of radar backscatter intensity (BI), vegetation index (VI), and polarization feature (PF) in distinguishing deforestation areas from the background environment. Second, we selected the best-performing radar features to construct a multidimensional feature space model and used an unsupervised K-mean clustering method to identify deforestation areas. Finally, qualitative and quantitative methods were used to validate the performance of the proposed method. The results in Paraguay, Brazil, and Mexico showed that (1) the overall accuracy (OA) and F1 score (F1) of 3DC were 88.1–98.3% and 90.2–98.5%, respectively. (2) 3DC achieved similar accuracy to supervised methods without the need for samples. (3) 3DC matched well with Global Forest Change (GFC) maps and provided more detailed spatial information. Furthermore, we applied the 3DC to deforestation mapping in Paraguay and found that deforestation events occurred mainly in the second half of the year. To conclude, 3DC is a simple and efficient method for monitoring tropical deforestation events, which is expected to serve the restoration of forests after deforestation. This study is also valuable for the development and implementation of forest management policies in the tropics.
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来源期刊
CiteScore
4.50
自引率
6.20%
发文量
256
审稿时长
12 weeks
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