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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Evaluation of Sentinel-2 time-series for mapping floodplain grassland plant communities
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Evaluation of Sentinel-2 time-series for mapping floodplain grassland plant communities

机译:Sentinel-2时间系列评估覆普利特草地植物群落

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摘要

Monitoring grassland plant communities is crucial for understanding and managing biodiversity. Previous studies indicate that mapping these natural habitats from single-date remotely sensed imagery remains challenging because some communities have similar physiognomy. The recently launched Sentinel-2 satellites are a promising opportunity for monitoring vegetation. This article assesses the advantages of Sentinel-2 time-series for discriminating plant communities in wet grasslands. An annual Sentinel-2 time-series was compared respectively to single-date and single-band datasets derived from this time-series for mapping grassland plant communities in a temperate floodplain located near Mont-Saint-Michel Bay, which is included in the long-term ecological research network "ZA Armorique" (France). At this 475 ha site, 123 vegetation releves were collected and assigned to seven plant communities to calibrate and validate the Sentinel-2 data. Satellite images were classified using support vector machine (SVM) and random forest (RF) classifiers. Results show that the SVM classifier performs slightly better than the RF classifier (overall accuracy 0.78 and 0.71, respectively). They highlight that accuracy is lower when using single-date (0.67) or single-band images (0.70). The results also reveal that discrimination of plant communities is more sensitive to temporal resolution (Delta = 0.34 in overall accuracy) than spectral resolution (Delta = 0.12 in overall accuracy).
机译:监测草地植物社区对于理解和管理生物多样性至关重要。以前的研究表明,从单日远程感知图像中映射这些自然栖息地仍然具有挑战性,因为某些社区具有类似的地理位理。最近推出的Sentinel-2卫星是监测植被的有希望的机会。本文评估了Sentinel-2时间系列的优势,用于鉴别湿草地的植物群落。每年的Sentinel-2时间系列分别比较从该时间序列的单日和单频带数据集,用于在蒙特-Saint-Michel湾附近的温带洪泛区中映射草地植物群落,其中包括在漫长的 - 卫生生态研究网络“Za Armorique”(法国)。在此475个HA网站上,收集123个植被相关,并分配到七个植物社区以校准并验证Sentinel-2数据。使用支持向量机(SVM)和随机林(RF)分类器进行分类卫星图像。结果表明,SVM分类器比RF分类器(分别为0.78和0.71)略好。它们强调,使用单日(0.67)或单带图像(0.70)时,精度较低。结果还揭示了植物群落的鉴别对时间分辨率更敏感(Δ= 0.34总体精度)而不是光谱分辨率(Δ= 0.12总体精度)。

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