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Classification mapping of salt marsh vegetation by flexible monthly NDVI time-series using Landsat imagery

机译:使用Landsat影像按月度NDVI灵活的时间序列对盐沼植被的分类图

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Salt marshes are deemed as one of the most dynamic and valuable ecosystems on Earth. Recently, salt marsh deterioration and loss have become widespread because of anthropogenic stressors and sea level rise. Long-term acquisition of spatial information on salt marsh vegetation communities is thus critical to detect the general evolutionary trend of marsh ecosystems before irreversible change occurs. Medium resolution imagery organized in inter-annual time series has been proven suitable for large-scale mapping of salt marsh vegetation. For long-term monitoring purpose, the challenge still lies in developing time series based on data with sparse and uneven temporal distribution. This paper proposes a flexible Monthly NDVI Time-Series (MNTS) approach to achieve multi-temporal classification maps of salt marsh vegetation communities in the Virginia Coast Reserve, USA, by utilizing all viable Landsat TM/ETM + images during the period 1984-2011. Salt marsh vegetation communities are identified on a reference MNTS spanning 12 months with an overall accuracy of 0.898, approximately 0.107 higher than classifications using single images. Utilizing a flexible selection process based on the reference MNTS, a significant inverse hyperbolic relationship emerges between overall accuracy and average length of the time series. Based on these results, eight classification maps with average accuracy of 0.844 and time interval of 2-5 years are acquired. A spatio-temporal analysis of the maps indicates that the upper low marsh vegetation community has diminished by 19.4% in the study period, with a recent acceleration of losses. The conversion of marsh area to vegetation communities typical of low elevations (37.7 km(2)) is more than twice the conversion to vegetation communities typical of high elevations (18.3 km(2)), suggesting that salt marsh ecosystems at the Virginia Coast Reserve are affected by sea level rise.
机译:盐沼被认为是地球上最有活力和最有价值的生态系统之一。近来,由于人为压力源和海平面上升,盐沼的退化和损失已变得广泛。因此,长期获取盐沼植被群落的空间信息对于在不可逆转的变化发生之前检测出沼泽生态系统的总体演化趋势至关重要。已经证明,以年际时间序列组织的中分辨率图像适合于盐沼植被的大规模制图。对于长期监视而言,挑战仍然在于基于稀疏且时间分布不均匀的数据开发时间序列。本文提出了一种灵活的每月NDVI时间序列(MNTS)方法,通过利用1984-2011年期间所有可行的Landsat TM / ETM +图像,获得美国弗吉尼亚海岸保护区盐沼植被群落的多时间分类图。 。在12个月的参考MNTS上识别出盐沼植被群落,总体精度为0.898,比使用单个图像进行分类的精度高约0.107。利用基于参考MNTS的灵活选择过程,在总精度和时间序列的平均长度之间会出现明显的反双曲线关系。基于这些结果,获得了八个分类图,平均精度为0.844,时间间隔为2-5年。对地图的时空分析表明,在研究期内,上层低沼泽植被群落减少了19.4%,而最近的损失加速了。沼泽地区向典型的低海拔植被群落的转化(37.7 km(2))是两倍以上向典型的高海拔植被群落(18.3 km(2))的转化,表明弗吉尼亚海岸保护区的盐沼生态系统受海平面上升的影响。

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