泰国Samut Prakan省Bangpli区高分辨率图像自动二维建筑提取

Kannika Komwong, Ramphing Simking, Panu Nuangjumnong
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引用次数: 4

摘要

目前泰国在建筑提取方面的工作多是基于航拍图像的人工数字化三维建筑提取,耗时耗力。高分辨率卫星图像有望在城市规划制图、地图学、土地利用应用等方面得到广泛应用。自动和/或半自动建筑物提取是开发1平方公里高分辨率卫星图像中不同屋顶建筑物特征提取方法的替代方法之一。在泰国中部Samut Prakan省Bangpli区的部分地区,研究区约40%为住宅、商业区,其余30%为人工区。利用PCI Geometica的监督分类功能和ArcGIS软件的特征分析扩展实现图像。将建筑物提取结果与结果的百分比进行了比较。在本研究中,监督分类方法的结果可以正确提取约32%的建筑物图像,而监督分类方法的结果可以正确提取约42%的建筑物图像。确实,这两种方法都使用了更少的时间,所以它们都显示了特征提取过程的时间减少,硬件,软件和劳动,尽管它们在第一次输出时并不是完美的结果。在今后的工作中,如果对这些方法进行改进,结果应该会更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic 2D Building Extraction Using High Resolution Image in Bangpli District, Samut Prakan Province, Thailand
Most of the recent work in Thailand, on building extraction, is based on 3D building extraction by manual digitization from aerial photo which are both time and labor consuming. High-resolution satellite imagery is expected to be widely used on urban planning mapping, cartography, land use application and others.Automatic and/or semi automatic building extraction is one of the alternative to develop method for building features extraction, with different rooftops, from high resolution satellite image in 1 sq.km. of urban prawn, with mixed area, which is approximately 40% of the study area is residential, commercial area while other 30% is plantation area, in a part of Bangpli District, Samut Prakan Province, Central of Thailand. The image was implemented on the supervised classification function of PCI Geometica and feature analyst extension of ArcGIS software. The building extraction results were compared with percentage of the result. In this study, the result of supervised classification methodology can extract approximately 32% of buildings image properly and the other can extract approximately 42%. Exactly, the both method used less time, so they showed the time reduction, hardware, software, and labor in feature extraction process, although they were not perfect result at the first output. For future work, if the methods were improved algorithm, the result should get better.
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