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Land use classification in construction areas based on volunteered geographic information

机译:基于自愿地理信息的建筑区域土地利用分类

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In the process of land use management, the relative low construction land use efficiency may lead to more other types of land into construction land, and thus will also affect the amount of cultivated land, while reducing the ecological land as well. According to the current land use classification standard (GB/T 21010-2007), the construction land can be divided into business service land, residential land, public management and public service land, and storage land for industry, etc. To enhance the utilization efficiency of construction land, this research aims to develop a better way to divide the space distribution of different current land use types, which also provide both database and clues to concentrated land-use planning and monitoring. In this study, a new methodology (hierarchical grading classification method) will be proposed to solve the problems existing in the traditional division methods of construction land, and the experimental results will deliver a series of meaningful interpretations across discipline. To demonstrate this, taking the Fifth Ring of Hai Dian district, Beijing city as the research area, a variety of volunteer geographic information is determined, which including the Open Street Map (OSM), Points of Interest (POI), blogging sign data and Panoramio photos, etc. Firstly, the Open Street Map road data is used as a block boundary to divide the construction land into the different hierarchy of land parcels. Point of interest, its essence is the abstract expression of geographical entities. Since the Point of Interest and the divided land parcels share the consistent feature attributes, it is possible to use the different grade of POI to assign attribute to the different hierarchy of land parcels, and then the final results of the multi-layers will be combined together to do analysis (overlay, merge) to determine the construction land use type in this region. Finally, the confusion matrix is generated to compare the results among the Google street view, fieldwork and urban planning map. The accuracy rate of commercial and business facilities, industrial and warehouse, residential, administration and public services, street and transportation, and other construction land are 94.7%, 69.2%, 81.4%, 75.0%, 96.7% and 74.7% respectively. Furthermore, the kappa indices of classification is 0.83, showing that in this study, both the adopted data and the newly proposed method used in the process of classification of construction land are feasible, and the new method will have significant impact on the process of division construction land.
机译:在土地利用管理过程中,相对较低的建设用地利用效率可能导致其他类型的土地转化为建设用地,从而影响耕地数量,同时也减少了生态用地。根据现行土地利用分类标准(GB / T 21010-2007),建设用地可以分为商业服务用地,居住用地,公共管理和公共服务用地以及工业用地等。为了提高建筑用地的效率,本研究旨在开发一种更好的方法来划分当前不同土地利用类型的空间分布,这也为集中的土地利用规划和监测提供了数据库和线索。在这项研究中,将提出一种新的方法(分层分级分类方法)来解决传统的建设用地分割方法中存在的问题,并且实验结果将提供一系列有意义的跨学科的解释。为了证明这一点,以北京市海淀区第五环为研究区域,确定了各种志愿者地理信息,包括开放街道地图(OSM),景点(POI),博客标志数据和Panoramio照片等。首先,使用开放街道地图道路数据作为块边界,将建筑用地划分为不同的地块层次。兴趣点,其本质是地理实体的抽象表达。由于兴趣点和分割的地块共享一致的要素属性,因此可以使用不同等级的POI将属性分配给不同的地块层次结构,然后将多层的最终结果合并一起进行分析(叠加,合并),以确定该区域的建设用地类型。最后,生成混淆矩阵以比较Google街景视图,野外工作和城市规划图之间的结果。商业和商业设施,工业和仓库,住宅,行政和公共服务,街道和交通以及其他建设用地的准确率分别为94.7%,69.2%,81.4%,75.0%,96.7%和74.7%。此外,分类的kappa指数为0.83,表明在本研究中,在建设用地分类过程中采用的数据和新提出的方法都是可行的,新方法将对划分过程产生重大影响。建设用地。

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