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[结合多源遥感数据与面向对象信息提取的干旱湿地研究]

[Combining Multi-source Remote Sensing Data and Object-oriented Information Extraction for Arid Wetlands].

作者信息

Li Hong-Xia, Shi Yun, Ding Zhong-Jie, Huang Lin, Dong Jun, Liang Zhi-Gang, Zhu Xiao-Wen, Ma Yi-Ting, Wang Tong

机构信息

School of Geographic Sciences and Planning, Ningxia University, Yinchuan 750021, China.

Shanghai Chart Center, East China Sea Navigation Support Center, Shanghai 200082, China.

出版信息

Huan Jing Ke Xue. 2025 May 8;46(5):3127-3138. doi: 10.13227/j.hjkx.202405330.

DOI:10.13227/j.hjkx.202405330
PMID:40390437
Abstract

Wetlands are the heart of oases in the arid and semi-arid regions of Northwest China, playing a crucial role in climate regulation, water supply, flood storage and drought prevention, biodiversity conservation, and maintaining ecological stability in arid areas. The extraction of wetland information in arid regions provides a rapid and accurate means for monitoring the ecological environment, maintaining biodiversity, and preventing desertification and land degradation. Taking the Ningxia Yinchuan metropolitan area along the Yellow River as the study area, this research uses Sentinel-1 synthetic aperture radar (SAR) imagery, Sentinel-2 optical imagery, and topographic data as data sources. It applies object-oriented wetland information feature extraction methods to explore the importance of red edge, radar, and topographic features in extracting wetlands in arid areas. The feasibility of using the RF-Pearson model to select the optimal combination of features for wetlands in arid regions is verified, combined with the random forest algorithm and BP neural network to extract wetlands in the Ningxia Yinchuan metropolitan area in 2021. The results show that: ① Using the red edge band of Sentinel-2 imagery, the radar beam of Sentinel-1 imagery, and topographic data could effectively promote the identification and acquisition of wetland characteristics in arid regions, improving the overall accuracy of wetlands by 3.27%, 2.14%, and 1.83% compared to spectral indices and geometric features, respectively. ② The classification accuracy of the RF-Pearson model feature selection method was the highest, with the order of importance being: spectral features > geometric features > red edge features > radar features > topographic features. ③ The random forest model (RF) based on feature selection had the best classification effect on wetlands in arid region basins, with an overall accuracy of 89.79% and a Kappa coefficient of 0.842 3, which was higher than that of the BP neural network (BP) classification method, indicating that this method had certain reliability in extracting wetland information in arid regions. ④ Wetlands in the Ningxia Yinchuan metropolitan area mainly included five types: rivers, lakes, tidal flats and marshes, reservoir ponds, and ditches. They were mainly concentrated in Yinchuan City, Pingluo County, Shapotou District, Lingwu City, and Zhongning County. River wetlands dominated the wetlands in arid regions and were a prominent type of wetland in the Ningxia Yinchuan metropolitan area. In the classification results, the area of natural wetlands (rivers, lakes, and tidal flats and marshes) was 1 076.65 km, and the area of artificial wetlands (reservoir ponds, ditches) was 108.18 km, accounting for 90.86% and 9.14% of the total area of the study area, respectively. The research results can provide a scientific basis for monitoring the ecological background environment in arid regions and for ecological protection and high-quality development in the Yellow River Basin.

摘要

湿地是中国西北干旱和半干旱地区绿洲的核心,在气候调节、供水、蓄洪抗旱、生物多样性保护以及维持干旱地区生态稳定方面发挥着关键作用。干旱地区湿地信息的提取为监测生态环境、保护生物多样性以及防止沙漠化和土地退化提供了一种快速且准确的手段。本研究以黄河沿岸的宁夏银川大都市区为研究区域,使用哨兵 - 1合成孔径雷达(SAR)影像、哨兵 - 2光学影像和地形数据作为数据源。应用面向对象的湿地信息特征提取方法,探讨红边、雷达和地形特征在干旱地区湿地提取中的重要性。验证了使用RF - 皮尔逊模型为干旱地区湿地选择最优特征组合的可行性,并结合随机森林算法和BP神经网络提取2021年宁夏银川大都市区的湿地。结果表明:①利用哨兵 - 2影像的红边波段、哨兵 - 1影像的雷达波束和地形数据能够有效促进干旱地区湿地特征的识别与获取,与光谱指数和几何特征相比,湿地总体精度分别提高了3.27%、2.14%和1.83%。②RF - 皮尔逊模型特征选择方法的分类精度最高,重要性排序为:光谱特征>几何特征>红边特征>雷达特征>地形特征。③基于特征选择的随机森林模型(RF)对干旱地区流域湿地的分类效果最佳,总体精度为89.79%,Kappa系数为0.842 3,高于BP神经网络(BP)分类方法,表明该方法在干旱地区湿地信息提取方面具有一定可靠性。④宁夏银川大都市区的湿地主要包括河流、湖泊、滩涂沼泽、水库坑塘和沟渠五种类型。它们主要集中在银川市、平罗县、沙坡头区、灵武市和中宁县。河流湿地在干旱地区湿地中占主导地位,是宁夏银川大都市区湿地的突出类型。在分类结果中,自然湿地(河流、湖泊和滩涂沼泽)面积为1076.65平方千米,人工湿地(水库坑塘、沟渠)面积为108.18平方千米,分别占研究区域总面积的90.86%和9.14%。研究结果可为监测干旱地区生态背景环境以及黄河流域生态保护和高质量发展提供科学依据。

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