Use of Sentinel-2 for forest classification in Mediterranean environments

N. Puletti, F. Chianucci, Cristiano Castaldi
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引用次数: 93

Abstract

Spatially-explicit information on forest composition provides valuable information to fulfil scientific, ecological and management objectives and to monitor multiple changes in forest ecosystems. The recently developed Sentinel-2 (S2) satellite imagery holds great potential for improving the classification of forest types at medium-large scales due to the concurrent availability of multispectral bands with high spatial resolution and quick revisit time. In this study, we tested the ability of S2 for forest type mapping in a Mediterranean environment. Three operational S2 images covering different phenological periods (winter, spring, summer) were processed and analyzed. Ten 10 m and 20 m bands available from S2 and four vegetation indices (VIs) were used to evaluate the ability of S2 to discriminate forest categories (conifer, broadleaved and mixed forests) and four forest types (beech forests; mixed spruce-fir forests; chestnut forests; mixed oak forests). We found that a single S2 image acquired in summer cannot discriminate neither the considered forest categories nor the forest types and therefore multitemporal images collected at different phenological periods are required. The best configuration yielded an accuracy > 83% in all considered forest types. We conclude that S2 can represent an effective option for repeated forest monitoring and mapping.
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Sentinel-2在地中海环境中用于森林分类
关于森林组成的空间明确信息为实现科学、生态和管理目标以及监测森林生态系统的多种变化提供了宝贵的信息。最近开发的哨兵2号(S2)卫星图像在改进中大型森林类型分类方面具有巨大潜力,因为同时可以获得具有高空间分辨率和快速重访时间的多光谱波段。在这项研究中,我们测试了S2在地中海环境中绘制森林类型图的能力。处理和分析了三幅覆盖不同气象时期(冬季、春季、夏季)的S2操作图像。从S2和四个植被指数(VI)中获得的10个10米和20米波段用于评估S2区分森林类别(针叶树、阔叶林和混交林)和四种森林类型(山毛榉林、云杉-冷杉混合林、栗树林和橡树混合林)的能力。我们发现,在夏季采集的单个S2图像既不能区分所考虑的森林类别,也不能区分森林类型,因此需要在不同的酚期采集的多时相图像。在所有考虑的森林类型中,最佳配置的准确率>83%。我们得出的结论是,S2可以代表重复森林监测和测绘的有效选择。
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来源期刊
Annals of Silvicultural Research
Annals of Silvicultural Research Agricultural and Biological Sciences-Forestry
CiteScore
2.70
自引率
0.00%
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0
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