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首页> 外文期刊>Journal of Geoscience and Environment Protection >Developing an Automated Land Cover Classifier Using LiDAR and High Resolution Aerial Imagery
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Developing an Automated Land Cover Classifier Using LiDAR and High Resolution Aerial Imagery

机译:使用LiDAR和高分辨率航空影像开发自动土地覆盖分类器

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The aim of this project is to create high resolution land cover classification as well as tree canopy density maps at a regional level using high resolution spatial data. Modeling and the data manipulation and analysis of LiDAR LAS point cloud dataset as well as multispectral aerial photographs from the National Agriculture Imagery Program (NAIP) were carried out. Using geoprocessing modeling, a land cover map is created based on filtered returns from LiDAR point cloud data (LAS dataset) to extract features based on their class and return values, and traditional classification methods of high resolution multi-spectral aerial photographs of the remaining ground cover for Clarion County in Pennsylvania. The newly developed model produced 7 classes at 10 ft × 10 ft spatial resolution, namely: water bodies, structures, streets and paved surfaces, bare ground, grassland, trees, and artificial surfaces (e.g. turf). The model was tested against areas with different sizes (townships and municipalities) which revealed a classification accuracy between 94% and 96%. A visual observation of the results shows that some tree-covered areas were misclassified as built up/structures due to the nature of the available LiDAR data, an area of improvement for further studies. Furthermore, a geoprocessing service was created in order to disseminate the results of the land cover classification as well as the tree canopy density calculation to a broader audience. The service was tested and delivered in the form of a web application where users can select an area of interest and the model produces the land cover and/or the tree canopy density results (http://maps.clarion.edu/LandCoverExtractor). The produced output can be printed as a final map layout with the highlighted area of interest and its corresponding legend. The interface also allows the download of the results of an area of interest for further investigation and/or analysis.
机译:该项目的目的是使用高分辨率空间数据在区域级别上创建高分辨率土地覆被分类以及树冠密度图。对LiDAR LAS点云数据集以及来自国家农业影像计划(NAIP)的多光谱航拍照片进行了建模,数据处理和分析。使用地理处理建模,可基于LiDAR点云数据(LAS数据集)的滤波后的收益创建土地覆盖图,以根据其分类和收益值以及剩余地面的高分辨率多光谱航拍的传统分类方法提取特征宾夕法尼亚州克拉丽奥县的封面。新开发的模型在10英尺×10英尺的空间分辨率下产生了7类,即:水体,建筑物,街道和铺面,裸露的地面,草地,树木和人造表面(例如草皮)。该模型针对不同大小的区域(乡镇和直辖市)进行了测试,显示出94%至96%的分类精度。对结果的视觉观察表明,由于可用的LiDAR数据的性质,一些树木覆盖的区域被误分类为建筑物/结构,这是需要进一步研究的领域。此外,还创建了地理处理服务,以将土地覆盖分类的结果以及树冠密度的计算结果传播给更多的受众。该服务已通过Web应用程序的形式进行了测试和交付,用户可以在其中选择感兴趣的区域,然后模型会生成土地覆盖和/或树冠密度结果(http://maps.clarion.edu/LandCoverExtractor)。可以将产生的输出打印为最终地图布局,其中包含突出显示的关注区域及其相应的图例。该界面还允许下载感兴趣区域的结果以供进一步调查和/或分析。

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