Local-scale mapping of tree species in a lower mountain area using Sentinel-1 and -2 multitemporal images, vegetation indices, and topographic information

IF 2.7 3区 农林科学 Q2 ECOLOGY
Iosif Vorovencii, Lucian Dincă, Vlad Crișan, Ruxandra-Georgiana Postolache, Codrin-Leonid Codrean, Cristian Cătălin, Constantin Irinel Greșiță, Sanda Chima, Ion Gavrilescu
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Abstract

Introduction Mapping tree species is an important activity that provides the information necessary for sustainable forest management. Remote sensing is a effective tool that offers data at different spatial and spectral resolutions over large areas. Free and open acces Sentinel satellite imagery and Google Earth Engine, which is a powerful cloud computing platform, can be used together to map tree species. Methods In this study we mapped tree species at a local scale using recent Sentinel-1 (S-1) and Sentinel-2 (S-2) time-series imagery, various vegetation indices (Normalized Difference Vegetation Index - NDVI, Enhanced Vegetation Index - EVI, Green Leaf Index - GLI, and Green Normalized Difference Vegetation Index - GNDVI) and topographic features (elevation, aspect and slope). Five sets of data were used, in different combinations, together with the Random Forest classifier in order to determine seven tree species (spruce, beech, larch, fir, pine, mixed, and other broadleaves [BLs]) in the studied area. Results and discussion Dataset 1 was a combination of S-2 images (bands 2, 3, 4, 5, 6, 7, 8, 8a, 11 and 12), for which an overall accuracy of 76.74% was obtained. Dataset 2 comprised S-2 images and vegetation indices, leading to an overall accuracy of 78.24%. Dataset 3 included S-2 images and topographic features, which lead to an overall accuracy of 89.51%. Dataset 4 included S-2 images, vegetation indices, and topographic features, that have determined an overall accuracy of 89.36%. Dataset 5 was composed of S-2 images, S-1 images (VV and VH polarization), vegetation indices, and topographic features that lead to an overall accuracy of 89.68%. Among the five sets of data, Dataset 3 produced the most significant increase in accuracy, of 12.77%, compared to Dataset 1. Including the vegetation indices with the S-2 images (Dataset 2) gave an accuracy increase of only 1.50%. By combining the S-1 and S-2 images, vegetation indices and topographic features (Dataset 5) there was an accuracy increase of only 0.17%, compared with the S-2 images plus topographic features combination (Dataset 3). However, the input brought by the S-1 images was apparent in the increase in classification accuracy for the mixed and other BL species that were mostly found in hilly locations. Our findings confirm the potential of S-2 images, used together with other variables, for classifying tree species at the local scale.
基于Sentinel-1和sentinel -2多时相影像、植被指数和地形信息的低山区树种局域尺度制图
树种制图是为森林可持续管理提供必要信息的一项重要活动。遥感是提供大面积不同空间和光谱分辨率数据的有效工具。免费开放的Sentinel卫星图像和强大的云计算平台Google Earth Engine可以一起用于绘制树种图。方法利用近期Sentinel-1 (S-1)和Sentinel-2 (S-2)时间序列影像、各种植被指数(归一化植被指数- NDVI、增强植被指数- EVI、绿叶指数- GLI和绿色归一化植被指数- GNDVI)和地形特征(高程、坡向和坡度)在局地尺度上绘制树种图。为了确定研究区域内的7种树种(云杉、山毛榉、落叶松、冷杉、松树、混交林和其他阔叶[BLs]),我们使用了5组不同组合的数据和Random Forest分类器。数据集1是S-2图像(波段2、3、4、5、6、7、8、8a、11和12)的组合,总体准确率为76.74%。数据集2由S-2影像和植被指数组成,总体精度为78.24%。数据集3包含S-2图像和地形特征,总体精度为89.51%。数据集4包括S-2图像、植被指数和地形特征,总体精度为89.36%。数据集5由S-2图像、S-1图像(VV和VH极化)、植被指数和地形特征组成,总体精度为89.68%。在这五组数据中,与数据集1相比,数据集3的准确率提高幅度最大,达到12.77%。将植被指数与S-2图像(数据集2)结合,精度仅提高1.50%。与S-2影像加地形特征组合(数据集3)相比,S-1影像和S-2影像、植被指数和地形特征组合(数据集5)的分类精度仅提高0.17%。而S-1影像带来的输入在混合物种和其他主要分布于丘陵地区的BL物种的分类精度提高明显。我们的研究结果证实了S-2图像与其他变量一起使用在局部尺度上对树种进行分类的潜力。
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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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