Automated mapping of global 30 m tidal flats using time-series Landsat imagery: algorithm and products

IF 0.4 Q2 Engineering
Xiao Zhang, Liangyun Liu, Jinqing Wang, Tingting Zhao, Wendi Liu, Xidong Chen
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引用次数: 0

Abstract

Tidal flats are an important part of coastal ecosystems and play an important role in shoreline protection and biodiversity maintenance. Although many efforts have been made in tidal flat mapping, an accurate global tidal flat product covering all coasts globally is still lacking and urgently needed. In this study, a novel method is proposed for the automated mapping of global tidal flats at 30 m (GTF30) in 2020 based on the Google Earth Engine, which is also the first global tidal flat dataset covering the high latitudes (>60°N). Specifically, we first propose a new spectral index named the LTideI index through a sensitivity analysis, which is robust and can accurately capture low-tide information. Second, globally distributed training samples are automatically generated by combining multisource datasets and the spatiotemporal refinement method. Third, the global coasts are divided into 588 5°×5° geographical tiles, and the local adaptive classification strategy is used to map tidal flats in each 5°×5° region by using multisourced training features and the derived globally distributed training samples. The statistical results show that the total global area of tidal flats is about 140,922.5 km 2 , with more than 75% distributed on 3 continents in the Northern Hemisphere, especially in Asia (approximately 43.1% of the total). Finally, the GTF30 tidal flat dataset is quantitatively assessed using 13,994 samples, yielding a good overall accuracy of 90.34%. Meanwhile, the intercomparisons with several existing tidal flat datasets indicate that the GTF30 products can greatly improve the mapping accuracy of tidal flats. Therefore, the novel method can support the automated mapping of tidal flats, and the GTF30 dataset can provide scientific guidance and data support for protecting coastal ecosystems and supporting coastal economic and social development. The GTF30 tidal flat dataset in 2020 is freely accessible via https://doi.org/10.5281/zenodo.7936721 .
使用时间序列Landsat图像的全球30米潮滩自动测绘:算法和产品
滩涂是海岸带生态系统的重要组成部分,在岸线保护和生物多样性维持中发挥着重要作用。虽然在滩涂制图方面做了很多努力,但目前仍缺乏覆盖全球所有海岸的精确的全球滩涂产品。本研究提出了一种基于Google Earth Engine的2020年全球30 m潮滩自动制图(GTF30)的新方法,这也是首个覆盖高纬度地区(>60°N)的全球潮滩数据集。具体而言,我们首先通过灵敏度分析提出了一种新的光谱指数LTideI指数,该指数具有鲁棒性,可以准确地捕获低潮信息。其次,结合多源数据集和时空细化方法,自动生成全局分布的训练样本;第三,将全球海岸划分为588个5°×5°地理块,利用多源训练特征和得到的全局分布训练样本,采用局部自适应分类策略对每个5°×5°区域的潮滩进行映射。统计结果表明,全球潮滩总面积约为140922.5 km 2,其中75%以上分布在北半球的3大洲,其中以亚洲为主,约占43.1%。最后,利用13994个样本对GTF30潮滩数据集进行了定量评估,总体精度为90.34%。同时,通过与多个现有潮滩数据的对比,表明GTF30产品能显著提高潮滩制图精度。因此,该方法可为滩涂自动制图提供支持,GTF30数据集可为保护沿海生态系统、支持沿海经济社会发展提供科学指导和数据支撑。2020年的GTF30潮坪数据集可通过https://doi.org/10.5281/zenodo.7936721免费获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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