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基于多源遥感数据融合的黄河三角洲盐沼植被分类与监测

Classification and Monitoring of Salt Marsh Vegetation in the Yellow River Delta Based on Multi-Source Remote Sensing Data Fusion.

作者信息

Xu Ran, Fan Yanguo, Fan Bowen, Feng Guangyue, Li Ruotong

机构信息

School of Oceanography and Spatial Information, China University of Petroleum East China-Qingdao Campus, Qingdao 266580, China.

College of Underwater Acoustic Engineering, Harbin Engineering University, Harbin 150001, China.

出版信息

Sensors (Basel). 2025 Jan 17;25(2):529. doi: 10.3390/s25020529.

Abstract

Salt marsh vegetation in the Yellow River Delta, including (), (), and (), is essential for the stability of wetland ecosystems. In recent years, salt marsh vegetation has experienced severe degradation, which is primarily due to invasive species and human activities. Therefore, the accurate monitoring of the spatial distribution of these vegetation types is critical for the ecological protection and restoration of the Yellow River Delta. This study proposes a multi-source remote sensing data fusion method based on Sentinel-1 and Sentinel-2 imagery, integrating the temporal characteristics of optical and SAR (synthetic aperture radar) data for the classification mapping of salt marsh vegetation in the Yellow River Delta. Phenological and polarization features were extracted to capture vegetation characteristics. A random forest algorithm was then applied to evaluate the impact of different feature combinations on classification accuracy. Combining optical and SAR time-series data significantly enhanced classification accuracy, particularly in differentiating , , and . The integration of phenological features, polarization ratio, and polarization difference achieved a classification accuracy of 93.51% with a Kappa coefficient of 0.917, outperforming the use of individual data sources.

摘要

黄河三角洲的盐沼植被,包括()、()和(),对湿地生态系统的稳定性至关重要。近年来,盐沼植被经历了严重退化,这主要是由于入侵物种和人类活动造成的。因此,准确监测这些植被类型的空间分布对于黄河三角洲的生态保护和恢复至关重要。本研究提出了一种基于哨兵 -1 和哨兵 -2 影像的多源遥感数据融合方法,整合光学和 SAR(合成孔径雷达)数据的时间特征,用于黄河三角洲盐沼植被的分类制图。提取了物候和极化特征以捕捉植被特征。然后应用随机森林算法评估不同特征组合对分类精度的影响。结合光学和 SAR 时间序列数据显著提高了分类精度,特别是在区分()、()和()方面。物候特征、极化比和极化差的整合实现了 93.51% 的分类精度,卡帕系数为 0.917,优于使用单个数据源的情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3190/11769012/d53aeab6e5d6/sensors-25-00529-g001.jpg

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