基于多源遥感影像的红树林信息提取

Linlin Tan, Cheng Xing, Xinzhe Wang, Jianchao Fan
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引用次数: 0

摘要

红树林是沿海地区重要的湿地生态系统。它对维持沿海生态环境起着重要作用,也为各种生物的生存提供了保障。在过去的半个世纪里,红树林遭到了严重的破坏,因此寻找一种有效、准确的监测红树林变化的方法非常重要。遥感技术是监测红树林资源动态变化和健康状况的重要手段。本文以广西丹豆海红树林为研究区,利用多种光学卫星数据源,分析了红树林遥感信息识别的关键特征,研究了从不同数据源提取红树林的有效方法。实验结果表明,红树林提取的精度主要与光谱特征空间的信息量和数据源的空间分辨率有关,分类难度主要与陆生植物和红树林的区别有关。利用最大似然分类(MLC)和支持向量机分类(SVM)对Sentinel-2A卫星进行分类,精度非常接近。支持向量机分类更适合提取中低分辨率、大量光谱特征空间的Landsat8卫星和少量高空间分辨率光谱的高分一号卫星。支持向量机分类提取landsat8卫星图像的精度最高,总体精度为91.42%,kappa系数为0.8819。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mangrove Information Extraction Based on Multi-source Remote Sensing Images
Mangrove is an important wetland ecosystem in coastal areas. It plays an important role in maintaining the coastal ecological environment, and also provides a guarantee for the survival of various organisms. In the past half century, mangrove has been seriously damaged, so it is very important to find an efficient and accurate method to monitor mangrove changes. The remote sensing technology is an important approach to monitor the dynamic changes of mangrove resources and health status. This paper takes the mangrove in Dandou Ocean of Guangxi province as the research area, uses a variety of optical satellite data sources, analyzes the key features of mangrove remote sensing information recognition, and studies the effective methods of mangrove extraction from different data sources. The experimental results show that the accuracy of mangrove extraction is mainly related to the amount of information in the spectrum feature space and the spatial resolution of the data source, and the difficulty of classification is mainly the distinction between terrestrial plants and mangroves. The accuracy of Sentinel-2A satellite using maximum likelihood classification(MLC) and support vector machine classification(SVM) is very close. Landsat8 satellite with medium and low resolution and large number of spectrum feature space and Gaofen-1 satellite with small number of high spatial resolution spectra are more suitable to be extracted by support vector machine classification. The accuracy of landsat8 satellite image extraction by support vector machine classification is the highest, the overall accuracy is 91.42%, and the kappa coefficient is 0.8819.
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