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Estimation and mapping of above-ground biomass of mangrove forests and their replacement land uses in the Philippines using Sentinel imagery

机译:利用Sentinel影像估算和绘制菲律宾红树林的地上生物量及其替代土地利用

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The recent launch of the Sentinel-1 (SAR) and Sentinel-2 (multispectral) missions offers a new opportunity for land-based biomass mapping and monitoring especially in the tropics where deforestation is highest. Yet, unlike in agriculture and inland land uses, the use of Sentinel imagery has not been evaluated for biomass retrieval in mangrove forest and the non-forest land uses that replaced mangroves. In this study, we evaluated the ability of Sentinel imagery for the retrieval and predictive mapping of above-ground biomass of mangroves and their replacement land uses. We used Sentinel SAR and multi spectral imagery to develop biomass prediction models through the conventional linear regression and novel Machine Learning algorithms. We developed models each from SAR raw polarisation backscatter data, multispectral bands, vegetation indices, and canopy biophysical variables. The results show that the model based on biophysical variable Leaf Area Index (LAI) derived from Sentinel-2 was more accurate in predicting the overall above-ground biomass. In contrast, the model which utilised optical bands had the lowest accuracy. However, the SAR-based model was more accurate in predicting the biomass in the usually deficient to low vegetation cover non-forest replacement land uses such as abandoned aquaculture pond, cleared mangrove and abandoned salt pond. These models had 0.82-0.83 correlation/agreement of observed and predicted value, and root mean square error of 27.8-28.5 Mg ha(-1). Among the Sentinel-2 multispectral bands, the red and red edge bands (bands 4, 5 and 7), combined with elevation data, were the best variable set combination for biomass prediction. The red edge-based Inverted Red Edge Chlorophyll Index had the highest prediction accuracy among the vegetation indices. Overall, Sentinel-1 SAR and Sentinel-2 multispectral imagery can provide satisfactory results in the retrieval and predictive mapping of the above-ground biomass of mangroves and the replacement non-forest land uses, especially with the inclusion of elevation data. The study demonstrates encouraging results in biomass mapping of mangroves and other coastal land uses in the tropics using the freely accessible and relatively high-resolution Sentinel imagery. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:最近发射的Sentinel-1(SAR)和Sentinel-2(多光谱)任务为陆基生物量制图和监测提供了新的机会,尤其是在森林砍伐最高的热带地区。然而,与农业和内陆土地使用不同,尚未对Sentinel图像的使用进行红树林和非林地土地替代红树林的生物量获取评估。在这项研究中,我们评估了Sentinel影像对红树林地上生物量及其替代土地利用的检索和预测作图的能力。我们使用Sentinel SAR和多光谱图像通过常规的线性回归和新颖的机器学习算法来开发生物量预测模型。我们分别根据SAR原始极化背向散射数据,多光谱带,植被指数和冠层生物物理变量开发了模型。结果表明,基于Sentinel-2的生物物理可变叶面积指数(LAI)的模型在预测整体地上生物量方面更准确。相反,利用光波段的模型的精度最低。但是,基于SAR的模型可以更准确地预测通常缺乏植被的低森林覆盖率的非森林替代土地用途(例如废弃的水产养殖池,清除的红树林和废弃的盐池)中的生物量。这些模型的观测值和预测值具有0.82-0.83的相关性/一致性,并且均方根误差为27.8-28.5 Mg ha(-1)。在Sentinel-2多光谱波段中,红色和红色边缘波段(波段4、5和7)与高程数据相结合,是生物量预测的最佳变量集组合。在植被指数中,基于红边的倒红边叶绿素指数具有最高的预测精度。总体而言,Sentinel-1 SAR和Sentinel-2多光谱图像可以在红树林的地上生物量以及替代性非林地用途的检索和预测制图方面提供令人满意的结果,尤其是在包括海拔数据的情况下。该研究表明,使用可自由获取且相对高分辨率的Sentinel影像,在热带地区的红树林和其他沿海土地利用生物量测绘中取得了令人鼓舞的结果。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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