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Mapping Plant Communities in the Intertidal Zones Using Sentinel-2 and Sentinel-L Data

机译:使用Sentinel-2和Sentinel-L数据绘制潮间带植物群落图

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Intertidal habitats are important not only for the ecosystem services they provide but also because they represent a key ecotone between land and ocean. In this paper we explore the synergistic use of time series Sentinel-1 and Sentinel-2 data for mapping intertidal plant communities, using a Random Forest algorithm. We compare the performances of ten models with different input data. Results showed that the use of multi-seasonal Sentinel-2 images could significantly improve the mapping accuracy compared to the use of any single-season image. There was no statistically significant difference in mapping accuracies between the use of multi-seasonal and time series Sentinel-2 images. However, when combining time series Sentinel-1 data, time series Sentinel-2 data and NDVI statistic metrics, the highest mapping accuracy was achieved with an overall mapping accuracy of 77.7% and the Kappa coefficient of 0.75.
机译:潮间生境不仅对它们提供的生态系统服务很重要,而且因为它们代表着陆地和海洋之间的关键生态过渡。在本文中,我们使用随机森林算法探索了时间序列Sentinel-1和Sentinel-2数据的协同使用,以绘制潮间带植物群落。我们比较了具有不同输入数据的十个模型的性能。结果表明,与使用任何单一季节的图像相比,使用多个季节的Sentinel-2图像可以显着提高映射精度。使用多季节和时间序列Sentinel-2图像之间在制图准确性上没有统计学上的显着差异。但是,将时间序列Sentinel-1数据,时间序列Sentinel-2数据和NDVI统计量度相结合时,可以实现最高的映射精度,总体映射精度为77.7%,Kappa系数为0.75。

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