College of Resources, Environment and Tourism, Capital Normal University, Beijing 100048, China; Key Laboratory of 3D Information Acquisition and Application of Ministry, Beijing 100048, China; Beijing Key Laboratory of Resources Environment and GIS, Beijing 100048, China; Beijing Laboratory of Water Resources Security, Beijing 10048, China.
College of Resources, Environment and Tourism, Capital Normal University, Beijing 100048, China; Key Laboratory of 3D Information Acquisition and Application of Ministry, Beijing 100048, China; Beijing Key Laboratory of Resources Environment and GIS, Beijing 100048, China; Beijing Laboratory of Water Resources Security, Beijing 10048, China.
Sci Total Environ. 2021 Aug 20;783:147061. doi: 10.1016/j.scitotenv.2021.147061. Epub 2021 Apr 12.
The native salt marsh plants of the Yellow River Delta wetland such as Suaeda salsa and Phragmites australis, providing significant habitats for rare waterfowl, are the key to conserve biodiversity and enhance habitats of this critical wetland. These plants are undergoing severe degradation due to rapid invasion of Spartina alterniflora, which has been a major growing threat to the livelihood of waterfowl and the sustainability of the Yellow River Delta wetland. Monitoring the spatial pattern of salt marsh species is fundamental to the conservation and restoration of the ecological functions in the Yellow River Delta wetland. The development of remote sensing technologies is making a leap forward, particularly the high resolution synthetic aperture radar (SAR), which holds the potential to map heterogeneous wetland regardless of weather. In this study, we developed an innovative framework to map the distribution of salt marsh species with the integration of optical (Sentinel-2) and SAR (Sentinel-1) images. Within this framework, a comprehensive set of features including spectral, spatial and temporal features were considered, and the best feature combination was selected and applied in a random forest classification model to obtain the final map. The results show that the temporal-spectral features combined with the spatial-temporal features of the SAR data can effectively improve the separability of Suaeda salsa, Phragmites australis, and Spartina alterniflora. Compared with using optical or SAR data alone, the combination of optical and SAR data improved the kappa coefficient and the overall classification accuracy by 0.10-0.19 and 6.04-11.61%, respectively. The spatial distribution of the two main native plants and the invasive plant can facilitate ecological restoration of the Yellow River Delta wetland. The framework developed by this study can be efficiently replicated and transferred by similar studies. Our approach lays a solid foundation for intelligent monitoring and management of coastal wetland.
黄河三角洲湿地的乡土盐沼植物,如盐地碱蓬和芦苇,为珍稀水鸟提供了重要的栖息地,是保护生物多样性和增强这一关键湿地栖息地的关键。这些植物由于互花米草的迅速入侵而遭受严重退化,互花米草已成为水鸟生存和黄河三角洲湿地可持续性的主要威胁。监测盐沼物种的空间格局是保护和恢复黄河三角洲湿地生态功能的基础。遥感技术的发展正在取得飞跃,特别是高分辨率合成孔径雷达(SAR),它有可能在任何天气条件下绘制异质湿地地图。在本研究中,我们开发了一种创新的框架,通过整合光学(哨兵-2)和 SAR(哨兵-1)图像来绘制盐沼物种的分布。在这个框架内,考虑了一系列全面的特征,包括光谱、空间和时间特征,并选择了最佳特征组合,并应用于随机森林分类模型中,以获得最终的地图。结果表明,将 SAR 数据的时间光谱特征与空间时间特征相结合,可以有效地提高盐地碱蓬、芦苇和互花米草的可分离性。与单独使用光学或 SAR 数据相比,光学和 SAR 数据的结合分别提高了盐地碱蓬、芦苇和互花米草的kappa 系数和整体分类精度 0.10-0.19 和 6.04-11.61%。两种主要乡土植物和入侵植物的空间分布有利于黄河三角洲湿地的生态恢复。本研究提出的框架可以通过类似的研究进行高效复制和转移。我们的方法为沿海湿地的智能监测和管理奠定了坚实的基础。