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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >ASTER/Terra imagery and a multilevel semantic network for semi-automated classification of landforms in a subtropical area.
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ASTER/Terra imagery and a multilevel semantic network for semi-automated classification of landforms in a subtropical area.

机译:亚热带地区的地貌半自动分类的ASTER / Terra影像和多层语义网络。

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摘要

This research is committed to develop a semi-automated landforms classification method for a subtropical area located in the southeast of Brazil, using optical mediumresolution imagery from ASTER/Terra. A four-level semantic network driven by a set of spectral, textural, and geomorphometric variables was used. The textural and geomorphometric variables were extracted from an ASTER/Terra DEM. The semantic network was initially conceived to classify macro morphogenetic landforms and was then further detailed to allow a finer classification, which amounted to eleven classes of morphographic landforms. In order to assess the classification accuracy, statistical indices were derived from a contingency table obtained by means of a comparison between the classified scene and a reference map. The final agreement indices for the macro and detailed landforms classifications were 76 percent and 80 percent, respectively. The employed object-based image analysis has proved to be a suitable method for semiautomated procedures in the classification of landforms.
机译:这项研究致力于使用来自ASTER / Terra的光学中分辨率图像,为位于巴西东南部的亚热带地区开发一种半自动地貌分类方法。使用了由一组频谱,纹理和地貌变量驱动的四级语义网络。纹理和地貌变量从ASTER / Terra DEM中提取。最初将语义网络构想为对宏观形态发生地貌进行分类,然后对其进行进一步详细描述以允许进行更好的分类,该分类总计为11类形态学地貌。为了评估分类准确度,从通过分类场景和参考地图之间的比较获得的列联表中导出统计指标。宏观和详细地貌分类的最终协议指数分别为76%和80%。事实证明,采用的基于对象的图像分析是半自动程序在地貌分类中的一种合适方法。

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