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A knowledge-based approach of satellite image classification for urban wetland detection.

机译:一种基于知识的卫星图像分类方法,用于城市湿地检测。

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摘要

It has been a technical challenge to accurately detect urban wetlands with remotely sensed data by means of pixel-based image classification. This is mainly caused by inadequate spatial resolutions of satellite imagery, spectral similarities between urban wetlands and adjacent land covers, and the spatial complexity of wetlands in human-transformed, heterogeneous urban landscapes. Knowledge-based classification, with great potential to overcome or reduce these technical impediments, has been applied to various image classifications focusing on urban land use/land cover and forest wetlands, but rarely to mapping the wetlands in urban landscapes. This study aims to improve the mapping accuracy of urban wetlands by integrating the pixel-based classification with the knowledge-based approach. The study area is the metropolitan area of Kansas City, USA. SPOT satellite images of 1992, 2008, and 2010 were classified into four classes - wetland, farmland, built-up land, and forestland - using the pixel-based supervised maximum likelihood classification method. The products of supervised classification are used as the comparative base maps. For our new classification approach, a knowledge base is developed to improve urban wetland detection, which includes a set of decision rules of identifying wetland cover in relation to its elevation, spatial adjacencies, habitat conditions, hydro-geomorphological characteristics, and relevant geostatistics. Using ERDAS Imagine software's knowledge classifier tool, the decision rules are applied to the base maps in order to identify wetlands that are not able to be detected based on the pixel-based classification. The results suggest that the knowledge-based image classification approach can enhance the urban wetland detection capabilities and classification accuracies with remotely sensed satellite imagery.
机译:通过基于像素的图像分类,利用遥感数据准确检测城市湿地是一项技术挑战。这主要是由于卫星图像的空间分辨率不足,城市湿地与相邻土地覆盖物之间的光谱相似性以及人类转化的异质城市景观中湿地的空间复杂性所致。基于知识的分类具有克服或减少这些技术障碍的巨大潜力,已应用于针对城市土地利用/土地覆盖和森林湿地的各种图像分类,但很少用于对城市景观中的湿地进行绘图。这项研究旨在通过将基于像素的分类与基于知识的方法相结合来提高城市湿地的制图精度。研究区域是美国堪萨斯城的都会区。使用基于像素的监督最大似然分类方法,将1992年,2008年和2010年的SPOT卫星图像分为四个类别-湿地,农田,建成地和林地。监督分类的产品用作比较底图。对于我们的新分类方法,开发了一个知识库来改善城市湿地的检测,该知识库包括一套确定湿地覆盖范围,确定其海拔高度,空间邻接,栖息地条件,水文地貌特征和相关地统计信息的决策规则。使用ERDAS Imagine软件的知识分类器工具,将决策规则应用于底图,以便基于基于像素的分类来识别无法检测到的湿地。结果表明,基于知识的图像分类方法可以增强遥感卫星图像对城市湿地的检测能力和分类精度。

著录项

  • 作者

    Xu, Xiaofan.;

  • 作者单位

    University of Missouri - Kansas City.;

  • 授予单位 University of Missouri - Kansas City.;
  • 学科 Remote Sensing.;Geodesy.
  • 学位 M.S.
  • 年度 2014
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:14

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