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Mapping annual forest cover by fusing PALSAR/PALSAR-2 and MODIS NDVI during 2007-2016

机译:通过融合皮瓣/波拉勒-2和MODIS NDVI在2007-2016中映射年度森林覆盖

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Advanced Land Observing Satellite (ALOS) Phased Arrayed L-band Synthetic Aperture Radar (PALSAR) HH and HV polarization data were used previously to produce annual, global 25 m forest maps between 2007 and 2010, and the latest global forest maps of 2015 and 2016 were produced by using the ALOS-2 PALSAR-2 data. However, annual 25 m spatial resolution forest maps during 2011-2014 are missing because of the gap in operation between ALOS and ALOS-2, preventing the construction of a continuous, fine resolution time-series dataset on the world's forests. In contrast, the MODerate Resolution Imaging Spectroradiometer (MODIS) NDVI images were available globally since 2000. This research developed a novel method to produce annual 25 m forest maps during 2007-2016 by fusing the fine spatial resolution, but asynchronous PALSAR/PALSAR-2 with coarse spatial resolution, but synchronous MODIS NDVI data, thus, filling the four-year gap in the ALOS and ALOS-2 time-series, as well as enhancing the existing mapping activity. The method was developed concentrating on two key objectives: 1) producing more accurate 25 m forest maps by integrating PALSAR/PALSAR-2 and MODIS NDVI data during 2007-2010 and 2015-2016; 2) reconstructing annual 25 m forest maps from time-series MODIS NDVI images during 2011-2014. Specifically, a decision tree classification was developed for forest mapping based on both the PALSAR/PALSAR-2 and MODIS NDVI data, and a new spatial-temporal super resolution mapping was proposed to reconstruct the 25 m forest maps from time-series MODIS NDVI images. Three study sites including Paraguay, the USA and Russia were chosen, as they represent the world's three main forest types: tropical forest, temperate broadleaf and mixed forest, and boreal conifer forest, respectively. Compared with traditional methods, the proposed approach produced the most accurate continuous time-series of fine spatial resolution forest maps both visually and quantitatively. For the forest maps dur
机译:先进的土地观察卫星(ALOS)相控阵列的L波段合成孔径雷达(PALSAR)HH和HV偏振数据以前在2007年至2010年期间生成年度全球25米森林地图,以及2015年和2016年的最新全球森林地图通过使用Alos-2 Palsar-2数据来生产。然而,由于ALOS和ALOS-2之间的操作差距,每年25米的空间分辨率森林地图缺少,防止了世界森林上的连续,精细分辨率的分数数据集的差距。相比之下,自2000年以来全球可用中度分辨率成像光谱仪(MODIS)NDVI图像。本研究通过融合了精细的空间分辨率,而是通过融合精细的空间分辨率,而是异步Palsar / Palsar-2在2007 - 2016年期间生产每年25米森林地图的新方法。具有粗短的空间分辨率,但同步MODIS NDVI数据,从而填补了ALOS和ALOS-2时间序列中的四年间隙,以及增强现有映射活动。该方法是在两个关键目标上集中开发的:1)通过在2007-2010和2015-2016期间整合Palsar / Palsar-2和MODIS NDVI数据来生产更准确的25米森林地图; 2)在2011-2014期间重建从时间序列MODIS NDVI图像的年度25米森林地图。具体而言,基于Palsar / Palsar-2和Modis NDVI数据的森林映射开发了决策树分类,并提出了一种新的空间 - 时间超分辨率映射来重建从时间序列Modis NDVI图像的25米林地图。选择了三个研究网站,包括巴拉圭,美国和俄罗斯,因为它们代表了世界三种主要森林类型:热带森林,温带阔叶和混合森林,以及北方针叶树林。与传统方法相比,所提出的方法在视觉上和定量上产生了最精确的连续时间系列的精细空间分辨率森林地图。对于森林地图Dur

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