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Mapping rubber tree growth in mainland Southeast Asia using time-series MODIS 250 m NDVI and statistical data.

机译:使用时间序列MODIS 250 m NDVI和统计数据绘制东南亚大陆橡胶树的生长图。

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Expanding global and regional markets are driving the conversion of traditional subsistence agricultural and occupied non-agricultural lands to commercial-agricultural purposes. In many parts of mainland Southeast Asia rubber plantations are expanding rapidly into areas where the crop was not historically found. Over the last several decades more than one million hectares of land have been converted to rubber trees in areas of China, Laos, Thailand, Vietnam, Cambodia and Myanmar, where rubber trees were not traditionally grown. This expansion of rubber plantations has replaced ecologically important secondary forests and traditionally managed swidden fields and influenced local energy, water and carbon fluxes. Accurate and up-to-date monitoring and mapping of rubber tree growth is critical to understanding the implications of this changing ecosystem. Discriminating rubber trees from second-growth forests and fallow land has proven challenging. Previous experiments using machine-learning approaches with hard classifications on remotely sensed data, when faced with the realities of a heterogeneous plant-life mixture and high intra-class variance, have tended to overestimate the areas of rubber tree growth. Our current research sought to: (1) to investigate the potential of using a Mahalanobis typicality model to deal with mixed pixels; and (2) to explore the potential for combining MOderate Resolution Imaging Spectroradiometer (MODIS) imagery with sub-national statistical data on rubber tree areas to map the distribution of rubber tree growth across this mainland Southeast Asia landscape. Our study used time-series MODIS Terra 16-day composite 250 m Normalized Difference Vegetation Index (NDVI) products (MOD13Q1) acquired between March 2009 and May 2010. We used the Mahalanobis typicality method to identify pixels where rubber tree growth had the highest probability of occurring and sub-national statistical data on rubber tree growth to quantify the number of pixels of rubber tree growth mapped per administrative unit. We used Relative Operating Characteristic (ROC) and error matrix analysis, respectively, to assess the viability of Mahalanobis typicalities and to validate classification accuracy. High ROC values, over 0.8, were achieved with the Mahalanobis typicality images of both mature and young rubber trees. The proposed method greatly reduced the commission errors for the two types of rubber tree growth to 1.9% and 2.8%, respectively (corresponding to user's accuracies of 98.1% and 97.2%, respectively). Results indicate that integrating Mahalanobis typicalities with MODIS time-series NDVI data and sub-national statistics can successfully overcome the earlier overestimation problem.
机译:不断扩大的全球和区域市场正在推动将传统的自给自足农业和被占领的非农业用地转变为商业性农业用途。在东南亚大陆的许多地区,橡胶种植园正在迅速扩展到历史上从未发现过这种作物的地区。在过去的几十年中,在中国,老挝,泰国,越南,柬埔寨和缅甸等不习惯种植橡胶树的地区,已有超过一百万公顷的土地被转化为橡胶树。橡胶种植园的扩张取代了具有生态重要性的次生林和传统管理的耕地,并影响了当地的能源,水和碳通量。准确,最新的橡胶树生长监测和制图对于了解这种不断变化的生态系统的影响至关重要。事实证明,将橡胶树与次生林和休耕地区分开。以前,在面对异质植物-生命混合物和类内差异较大的现实时,使用对遥感数据进行硬分类的机器学习方法进行的实验倾向于过高估计橡胶树的生长面积。我们目前的研究试图:(1)研究使用Mahalanobis典型模型处理混合像素的潜力; (2)探索将中等分辨率成像光谱仪(MODIS)图像与有关橡胶树地区的国家以下统计数据结合起来,以绘制橡胶树生长在整个东南亚大陆景观中的分布的潜力。我们的研究使用了2009年3月至2010年5月之间获取的时间序列MODIS Terra 16天复合250 m归一化植被指数(NDVI)产品(MOD13Q1)。我们使用了Mahalanobis典型方法来识别橡胶树生长可能性最高的像素。关于橡胶树生长的发生和国家以下统计数据的数量,以量化每个管理单位映射的橡胶树生长的像素数。我们分别使用相对工作特征(ROC)和误差矩阵分析来评估Mahalanobis典型性的可行性并验证分类准确性。使用成熟橡胶树和幼小橡胶树的Mahalanobis典型性图像可实现超过0.8的高ROC值。所提出的方法将两种类型的橡胶树生长的佣金误差分别降低至1.9%和2.8%(分别对应于用户的准确度分别为98.1%和97.2%)。结果表明,将Mahalanobis典型性与MODIS时间序列NDVI数据和地方统计数据相结合可以成功克服早期的高估问题。

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