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CCAV-10m: an annual spatiotemporal dataset for eastern coastal China’s wetland vegetation by integrating Sentinel-1/2 observations via deep learning

  • Yuying Li
  • , Lina Yuan*
  • , Ting Liu
  • , Zijiang Song
  • , Shuang Yang
  • , Zilong Zhu
  • , Min Liu*
  • *此作品的通讯作者
  • East China Normal University

科研成果: 期刊稿件文章同行评审

摘要

Coastal wetland vegetation plays a vital role in shoreline protection and ecosystem management, highlighting the need for accurate and high-resolution mapping of these unique and vulnerable habitats. Here, we present CCAV-10m, the first publicly available annual species-level wetland dataset for eastern coastal China at 10 m resolution (2016–2023). This dataset was generated using a novel phenology-guided coastal wetland vegetation classification network (P_SVCN), which integrates Sentinel-1/2 satellite imagery with extensive in situ observations. Validation based on 4668 in situ samples confirms that P_SVCN delivers strong classification performance, achieving an overall accuracy of 0.916 and a Kappa coefficient of 0.898. Spatiotemporal analysis of CCAV-10m reveals that Suaeda spp. is the dominant vegetation type, followed by Spartina alterniflora, whose coverage nearly equals the combined extent of Phragmites australis, mangroves, Scirpus mariqueter, and Tamarix chinensis. Notably, this work fills critical gaps in both spatial detail and temporal consistency across existing coastal wetland datasets, demonstrating the effectiveness of deep-learning-based fusion of optical and SAR data for high-resolution vegetation mapping. Regular updates to CCAV-10m will support long-term coastal wetland research, enhance invasive species monitoring, and inform wetland restoration and precision management efforts. The CCAV-10m dataset is openly accessible at https://doi.org/10.57760/sciencedb.31077.

源语言英语
页(从-至)2907-2927
页数21
期刊Earth System Science Data
18
4
DOI
出版状态已出版 - 27 4月 2026

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