首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >Quantitative Analysis of Transportation Network Connectivity with Road Features Automatically Extracted from High-resolution Satellite Imagery
【24h】

Quantitative Analysis of Transportation Network Connectivity with Road Features Automatically Extracted from High-resolution Satellite Imagery

机译:从高分辨率卫星图像中提取与道路特征的运输网络连接的定量分析

获取原文

摘要

Potential uses of high-resolution satellite imagery such as KOMPSAT (KOrea Multi Purpose SATellite) EOC (Electro Optical Camera) or IKONOS, in the field of urban planning and transportation planning are widely recognized; currently, actual applications in these fields have been tried in the most countries. However, most approaches, in some extents, are urban feature extraction by automatic or semi-automatic methodologies and human interpretation or recognition with other ancillary digital information. In this study, automatic road feature extraction firstly was attempted with newly implementation of GDPA (Gradient Direction Profile Algorithm), proposed by Wang and Zhang (2000). Further, road features extracted from some ortho-rectified KOMPSAT EOC and IKONOS imageries at a case study area in nearby Seoul, Korea, as results of GDPA, were evaluated with actual digital GIS road layers of National Geographic Institute in Korea, by computation of commission and omission error assessment. Second, these road features, after accuracy assessment, were used to extract quantitative indices such as a index, and y index, in the area of interests. These indices are for providing information on connectivity status of road network, and also related to accessibility of multi-link structure. Conclusively, it is thought that the results and products in this study can be effectively utilized to local government applications such as urban planning and transportation planning for transportation geographic analysis associated with high-resolution remotely sensed imageries.
机译:高分辨率卫星图像如Kompsat(韩国多用途卫星)EOC(电光光电摄像机)或IKONOS,在城市规划和运输规划领域的潜在用途得到了广泛认可的;目前,这些领域的实际应用已经在大多数国家进行了审判。然而,在某些范围内的大多数方法是通过自动或半自动方法和人类解释或与其他辅助数字信息的识别来提取城市特征。在本研究中,首先尝试了王和张(2000)提出的GDPA(梯度方向剖面算法)的新实现了自动化道路特征提取。此外,在韩国附近首尔的一些纠正的Kompsat EoC和Ikonos Imageries中提取的道路特征是GDPA的结果,通过韩国国家地理学院的实际GIS公路层评估了委员会的实际GIS路面和遗漏错误评估。其次,这些道路特征在准确性评估后,用于提取感兴趣领域的定量指数,如指数和y指数。这些指标用于提供有关道路网络的连接状态的信息,以及与多链路结构的可访问性有关。结论,据认为,本研究中的结果和产品可以有效地利用对地方政府的应用,例如与高分辨率传感的成像相关的运输地理分析的城市规划和运输规划。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号