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A multisensor, multitemporal approach for monitoring herbaceous vegetation growth in the Amazon floodplain

机译:一种多传感器,亚马逊洪泛区监测草本植被生长的多传感器

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The Amazon River floodplain is an important source of atmospheric CO2 and CH4. Aquatic herbaceous vegetation (macrophytes) have been shown to contribute significantly to floodplain net primary productivity (NPP) and methane emission in the region. Their fast growth rates under both flooded and dry conditions make herbaceous vegetation the most variable element in the Amazon floodplain NPP budget, and the most susceptible to environmental changes. The present study combines multitemporal Radarsat-1 and MODIS images to monitor spatial and temporal changes in herbaceous vegetation cover in the Amazon floodplain. Radarsat-1 images were acquired from Dec/2003 to Oct/2005, and MODIS daily surface reflectance products were acquired for the two cloud-free dates closest to each Radarsat-1 acquisition. An object-based, hierarchical algorithm was developed using the temporal SAR information to discriminate Permanent Open Water (OW), Floodplain (FP) and Upland (UL) classes at Level 1, and then subdivide the FP class into Woody Vegetation (WV) and Possible Macrophytes (PM) at Level 2. At Level 3, optical and SAR information were combined to discriminate actual herbaceous cover at each date. The resulting maps had accuracies ranging from 80% to 90% for Level 1 and 2 classifications, and from 60% to 70% for Level 3 classifications, with kappa values ranging between 0.7 and 0.9 for Levels 1 and 2 and between 0.5 and 0.6 for Level 3. All study sites had noticeable variations in the extent of herbaceous cover throughout the hydrological year, with maximum areas up to four times larger than minimum areas. The proposed classification method was able to capture the spatial pattern of macrophyte growth and development in the studied area, and the multitemporal information was essential for both separating vegetation cover types and assessing monthly variation in herbaceous cover extent.
机译:亚马逊河洪泛区是大气CO2和CH4的重要来源。已经显示出水生草本植物(Macrophytes)对该地区的洪泛区净初级生产率(NPP)和甲烷排放有显着贡献。它们在洪水和干燥条件下的快速增长率使草本植物植被成为亚马逊洪泛省NPP预算中最可变的元素,最容易受到环境变化的影响。本研究结合了多立体雷达拉特-1和MODIS图像,在亚马逊洪泛区监测草本植物覆盖物中的空间和时间变化。 Radarsat-1图像是从12月到2003年到OCT / 2005获取的,而MODIS日常表面反射率产品是用于最接近每个雷达拉特-1采集的两个无云日期。使用基于对象的分层算法,使用时间SAR信息开发,以在1级别辨别永久性开放水(OW),洪泛区(FP)和高地(UL)类,然后将FP类分解为木质植被(WV)和可能的Macrophytes(PM)在2级。在第3级,结合光学和SAR信息以在每个日期鉴别实际草本盖。生成的映射有精度从80%至90%为等级1和2个分类,以及从60%到第三级分类的70%,与卡伯值0.7和0.9为级别1和2 0.5和0.6之间和之间的范围内3级。所有研究遗址在整个水文中的草本覆盖范围内都有明显的变化,最大区域比最小区域大4倍。所提出的分类方法能够捕获研究区域中宏观物质生长和发育的空间模式,多型信息对于分离植被覆盖类型和评估草本覆盖程度的月度变异至关重要。

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