首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Open-source data-driven urban land-use mapping integrating point-line-polygon semantic objects: A case study of Chinese cities
【24h】

Open-source data-driven urban land-use mapping integrating point-line-polygon semantic objects: A case study of Chinese cities

机译:开源数据驱动的城市土地利用映射集成点线多边形语义对象:中国城市的案例研究

获取原文
获取原文并翻译 | 示例
       

摘要

Reliable urban land-use maps are essential for urban analysis because the spatial distribution of land use reflects the complex environment of cities under the combined effects of nature and socio-economics. In recent years, very high resolution (VHR) remote sensing imagery interpretation has resolved the "semantic gap" between the low-level data and the high-level semantic scenes, and has been used to map urban land use. Nevertheless, the existing frameworks cannot easily be applied to practical urban analysis, which can be attributed to three main reasons: 1) the indistinguishable socio-economic attributes of the same ground object layouts; 2) the weak transferability of the supervised frameworks and the time-consuming training sample annotation; and 3) the category system inconsistency between the data source and the urban land-use application. In this paper, to achieve an "application gap" breakthrough for urban land-use mapping, a data-driven point, line, and polygon semantic object mapping (PLPSOM) framework is proposed, which makes full use of open-source VHR images and multi-source geospatial data. In the PLPSOM framework, point, line, and polygon semantic objects are represented by the points of interest (POIs), OpenStreetMap (OSM) data, and VHR images corresponding to the scenes in the land-use mapping units, respectively. OSM line semantic objects are utilized to supply the boundaries of the land-use mapping units for the POIs and VHR images, forming urban land parcels (street blocks). To reduce the cost of the data annotation, the training dataset is constructed using multiple open-source data sources. An enhanced deep adaptation network (EDAN) is then proposed to acquire the categories of the VHR scene images in the case of partial transfer learning. Finally, in order to meet the actual needs, a rule-based category mapping (RCM) model is applied to integrate the categories of the POIs and VHR images into the urban land-use category system, allowing us to acquire the land-use maps of the cities. The effectiveness of the proposed method was tested in four cities of China, including six specific areas: Beijing and Wuhan city centers; the Hanyang District of Wuhan; the Hannan District of Wuhan; Macao; and the Wan Chai area of Hong Kong, achieving a high classification accuracy. The "urban image" analysis confirmed the practicality of the obtained urban land-use maps.
机译:可靠的城市土地利用地图对于城市分析至关重要,因为土地利用的空间分配反映了在自然和社会经济的综合影响下城市的复杂环境。近年来,非常高的分辨率(VHR)遥感图像解释已经解决了低级数据和高级语义场景之间的“语义差距”,并已用于映射城市土地利用。尽管如此,现有框架不能轻易应用于实际城市分析,这可能归因于三个主要原因:1)相同地面对象布局的无法区分的社会经济属性; 2)监督框架的弱转移性和耗时的训练样本注释; 3)数据源和城市土地利用申请之间的类别系统不一致。在本文中,提出了对城市土地利用映射的“应用差距”突破,提出了一种数据驱动点,线和多边形语义对象映射(PLPSOM)框架,这使得全面使用开源VHR图像和多源地理空间数据。在PLPSOM框架,点,行和多边形语义对象中分别由景点(POI),OpenStreetMap(OSM)数据和与土地使用映射单元中的场景对应的VHR图像表示。 OSM线路语义对象用于提供POI和VHR图像的土地利用映射单元的边界,形成城市陆地包裹(街区块)。为降低数据注释的成本,使用多个开源数据源构建训练数据集。然后提出增强的深度适应网络(EDAN)以在部分转移学习的情况下获取VHR场景图像的类别。最后,为了满足实际需求,应用了基于规则的类别映射(RCM)模型,以将POI和VHR图像的类别集成到城市土地使用类别系统中,允许我们获得土地使用地图城市。该方法的有效性在中国的四个城市进行了测试,其中包括六个具体领域:北京和武汉市中心;武汉汉阳区;武汉汉南区;澳门;和香港的湾仔区,实现了高分类准确性。 “城市形象”分析证实了所获得的城市土地利用地图的实用性。

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