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    融合潮位信息和光学遥感的潮间平地制图方法

    An intertidal flat mapping method integrating tidal level information and optical remote sensing data

    • 摘要: 潮间平地是动态变化显著的滨海湿地类型,其精准制图对海岸生态监测和资源管理至关重要。然而,潮间平地的遥感分类面临2大挑战: 一是受泥沙混合水体环境影响,高置信度样本获取困难; 二是缺乏有效的时序信息综合方法,传统方法主要依赖特征分位数提取,难以充分利用潮位变化信息。该研究以广东省湛江市沿海区域为研究区开展分析,提出一种融合潮位信息与LightGBM模型的高精度潮间平地制图框架,在稳定的低潮时刻提取高置信度样本,并基于单景影像进行分类,同时结合高程、云覆盖等信息优化分类结果,进一步地,利用潮间带面积变化与潮位信息的相关性,构建高潮与低潮时刻的动态检索方法,以生成稳定的潮间平地制图。基于SHAP(Shapley additive explanation)特征分析定量评估表明,亮度、坡度、近红外和短波红外2等特征对潮间平地分类贡献较大,而水体指数和高程在水体分类中起主导作用。实验结果显示,该方法在多个验证样本区域的总体精度达0.97,Kappa系数为0.96,F1分数稳定在0.97。该方法能精确地捕捉小尺度潮间平地特征,并在潮间平地与养殖塘的区分能力上表现优秀。

       

      Abstract: Intertidal flats represent a type of coastal wetland characterized by significant dynamic variations. Accurately mapping intertidal flats is crucial for coastal ecosystem monitoring and resource management. However, the classification of intertidal flats from remote sensing images faces two major challenges: the sediment-water mixed environments complicate the collection of high-confidence samples; there is a lack of effective methods for integrating time series information, as traditional methods primarily rely on percentile-based feature extraction while failing to leverage tidal level information. Focusing on the coastal area in Zhanjiang City, Guangdong Province, this study proposed a high-precision intertidal flat mapping framework that integrates tidal level information and the LightGBM model. Specifically, high-confidence samples were extracted during stable low-tide periods and then classified based on single-scene images. The classification results were further optimized by incorporating elevation, cloud cover, and other environmental factors. Furthermore, a dynamic retrieval method for high- and low-tide periods was developed based on the correlation between intertidal area variations and tidal levels, thereby generating stable intertidal flat maps. A quantitative evaluation based on Shapley additive explanations (SHAP) feature analysis reveals that the brightness, slope, near-infrared (NIR), and short-wave infrared 2 (SWIR2) contributed significantly to intertidal flat classification, whereas water indices and elevation played a dominant role in water body classification. Experimental results demonstrate that the proposed method achieved an overall accuracy of 0.97, a Kappa coefficient of 0.96, and a stable F1 score of 0.97 across multiple validation sample areas. It exhibited superior capability in accurately capturing small-scale intertidal flat features and distinguishing intertidal flats from aquaculture ponds.

       

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