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Geospatial mapping of Antarctic coastal oasis using geographic object-based image analysis and high resolution satellite imagery

机译:基于地理对象的图像分析和高分辨率卫星图像对南极沿海绿洲的地理空间映射

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An accurate spatial mapping and characterization of land cover features in cryospheric regions is an essential procedure for many geoscientific studies. A novel semi-automated method was devised by coupling spectral index ratios (SIRs) and geographic object-based image analysis (OBIA) to extract cryospheric geospatial information from very high resolution WorldView 2 (WV-2) satellite imagery. The present study addresses development of multiple rule sets for OBIA-based classification of WV-2 imagery to accurately extract land cover features in the Larsemann Hills, east Antarctica. Multilevel segmentation process was applied to WV-2 image to generate different sizes of geographic image objects corresponding to various land cover features with respect to scale parameter. Several SIRs were applied to geographic objects at different segmentation levels to classify land mass, man-made features, snow/ice, and water bodies. We focus on water body class to identify water areas at the image level, considering their uneven appearance on landmass and ice. The results illustrated that synergetic usage of SIRs and OBIA can provide accurate means to identify land cover classes with an overall classification accuracy of ≈97%. In conclusion, our results suggest that OBIA is a powerful tool for carrying out automatic and semiautomatic analysis for most cryospheric remote-sensing applications, and the synergetic coupling with pixel-based SIRs is found to be a superior method for mining geospatial information.
机译:在冰冻圈区域内,准确的空间制图和土地覆盖特征的表征是许多地球科学研究的基本步骤。通过耦合光谱指数比率(SIR)和基于地理对象的图像分析(OBIA)设计了一种新颖的半自动方法,以从高分辨率WorldView 2(WV-2)卫星图像中提取冰冻圈地理空间信息。本研究致力于开发基于OBIA的WV-2图像分类的多个规则集,以准确提取南极东部Larsemann Hills的土地覆盖特征。将多级分割过程应用于WV-2图像,以生成与尺度参数相关的与各种土地覆盖特征相对应的不同大小的地理图像对象。将几个SIR应用于不同分割级别的地理对象,以对土地质量,人造特征,雪/冰和水体进行分类。考虑到水在陆地和冰面上的不均匀分布,我们专注于水体分类以在图像级别识别水域。结果表明,SIR和OBIA的协同使用可以提供准确的方法来识别土地覆被类别,总体分类准确度约为97%。总之,我们的结果表明,OBIA是对大多数冰冻圈遥感应用进行自动和半自动分析的强大工具,并且与基于像素的SIR协同耦合被发现是挖掘地理空间信息的一种优越方法。

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