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首页> 外文期刊>International journal of remote sensing >Land-cover change and environmental impact analysis in the Greater Mankato area of Minnesota using remote sensing and GIS modelling
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Land-cover change and environmental impact analysis in the Greater Mankato area of Minnesota using remote sensing and GIS modelling

机译:明尼苏达州大曼卡托地区的土地覆盖变化和环境影响分析,采用遥感和GIS建模

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摘要

Land use and land-cover (LULC) data provide essential information for environmental management and planning. This research evaluates the land-cover change dynamics and their effects for the Greater Mankato Area of Minnesota using image classification and Geographic Information Systems (GIS) modelling in high-resolution aerial photography and QuickBird imagery. Results show that from 1971 to 2003, urban impervious surfaces increased from 18.3% to 32.6%, while cropland and grassland decreased from 54.2% to 39.1%. The dramatic urbanization caused evident environmental impacts in terms of runoff and water quality, whereas the annual air pollution removal rate and carbon storage/sequestration remained consistent since urban forests were steady over the 32-year span. The results also indicate that highly accurate land-cover features can be extracted effectively from high-resolution imagery by incorporating both spectral and spatial information, applying an image-fusion technique, and utilizing the hierarchical machine-learning Feature Analyst classifier. This research fills the high-resolution LULC data gap for the Greater Mankato Area. The findings of the study also provide valuable inputs for local decision-makers and urban planners.
机译:土地利用和土地覆盖(LULC)数据为环境管理和规划提供了重要信息。这项研究使用高分辨率航空摄影和QuickBird影像中的图像分类和地理信息系统(GIS)模型,评估了明尼苏达州大曼卡托地区的土地覆盖变化动态及其影响。结果表明,从1971年到2003年,城市不透水表面从18.3%增加到32.6%,而农田和草地从54.2%减少到39.1%。剧烈的城市化进程对径流和水质造成了明显的环境影响,而每年的空气污染清除率和碳储存/固存量保持不变,因为城市森林在32年的时间内一直保持稳定。结果还表明,通过结合光谱和空间信息,应用图像融合技术并利用分层的机器学习特征分析器分类器,可以从高分辨率图像中有效提取高精度的土地覆盖特征。这项研究填补了大曼卡托地区的高分辨率LULC数据空白。该研究的结果还为地方决策者和城市规划者提供了宝贵的意见。

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