High Spatial-Resolution Land Cover Classification and Wetland Mapping over Large Areas Using Integrated Geospatial Technologies

P. Nagel, B. J. Cook, F. Yuan
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引用次数: 7

Abstract

Land Use and Land Cover (LULC) and wetland classification maps are an important prerequisite for many environmental studies. In order to produce accurate LULC and wetland maps at high spatialresolution, a new approach was developed to integrate image classifications, spatial data layers, and analysis methods using Python scripting. Both Maximum Likelihood and Object-based Feature Extraction were adopted into the LULC classification. A spatial analysis approach was applied to wetland mapping based on available wetland inventories and soil data. Python scripts were created and used to automate these processes for each of the 30 reference sites across Minnesota and Wisconsin of the United States, which encompassed the entire study site. Results demonstrated that the proposed method allowed for the integration of geospatial data of varying sources and qualities to produce accurate LULC and wetland maps effectively. The results of accuracy assessment indicated that the classification maps for Minnesota and Wisconsin were of comparable quality. The objectbased classifier extracted LULC effectively from the Wisconsin imagery with acceptable accuracy despite lacking of the NIR spectral band. These maps were used as inputs to create a hydro geomorphicap-proach (HGM) guidebook (Hauer and Smith 1998) for both states (Cook et al. unpublished). The Python-based technique was found to be especially beneficial when dealing with big datasets over large study areas, as it allowed batch processing.
基于综合地理空间技术的高空间分辨率土地覆盖分类与大面积湿地制图
土地利用与土地覆盖(LULC)和湿地分类图是许多环境研究的重要前提。为了在高空间分辨率下生成准确的LULC和湿地地图,开发了一种使用Python脚本集成图像分类、空间数据层和分析方法的新方法。LULC分类采用了极大似然和基于对象的特征提取两种方法。基于现有湿地清查和土壤数据,采用空间分析方法进行湿地制图。Python脚本被创建并用于在美国明尼苏达州和威斯康星州的30个参考站点中的每个站点自动化这些过程,这些站点包含了整个研究站点。结果表明,该方法可以有效地整合不同来源和质量的地理空间数据,生成准确的LULC和湿地地图。准确性评估结果表明,明尼苏达州和威斯康星州的分类图质量相当。尽管缺少近红外光谱波段,但基于目标的分类器仍能有效地从威斯康星图像中提取LULC,精度可接受。这些地图被用作两个州的水文地貌学方法(HGM)指南(Hauer和Smith, 1998年)的输入(Cook等人未发表)。基于python的技术被发现在处理大型研究区域的大数据集时特别有益,因为它允许批量处理。
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