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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >SPATIAL PLANNING TEXT INFORMATION PROCESSING WITH USE OF MACHINE LEARNING METHODS
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SPATIAL PLANNING TEXT INFORMATION PROCESSING WITH USE OF MACHINE LEARNING METHODS

机译:使用机器学习方法的空间规划文本信息处理

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Spatial development plans provide an important information on future land development capabilities. Unfortunately, at the moment access to planning information in Poland is limited. Despite many initiatives taken to standardize planning documents, the standard for recording plans has not yet been developed. Each of the planning areas has a symbol and a category of land use, which is different in each of the plans. For this reason, it is very difficult to carry out an analysis enabling aggregation of all areas with a specific, the same development function.The authors in the article conduct experiments aimed at using machine learning methods for the needs of processing the text part of plans and their classification. The main aim was to find the best method for grouping texts of zones with the same land use. The experiment consists in an attempt to automatically classify the texts of findings for individual areas into the 10 defined categories of land use. Thanks to this, it is possible to predict the future land use function for a specific zone text regulation and aggregate all zones with specific land use type.In the proposed solution for the classification problem of heterogeneous planning information authors used k-means algorithm and artificial neural networks. The main challenge for this solution, however, was not the design of the classification tool but rather the preprocessing of the text. In this paper an approach for text preprocessing as well as selected methods of text classification is presented. The results of the work indicate greater use of CNN's usability to solve the problem presented. K-means clustering produces clusters, in which texts are not grouped according to land use function, which is not useful in the context of zones aggregation.
机译:空间发展计划提供有关未来土地开发能力的重要信息。不幸的是,目前在波兰的规划信息时有限。尽管对规范规划文件进行了许多举措,但尚未开发录制计划标准。每个规划领域都有一个符号和一类土地使用,在每个计划中都有不同。因此,非常难以执行分析,使所有区域的聚合具有特定的,具有特定的开发功能。作者在物品中进行了实验,用于使用机器学习方法来处理处理文本部分计划的需要他们的分类。主要目的是找到具有相同土地使用的区域文本的最佳方法。该实验包括尝试自动将个别区域的调查结果分类为10个定义的土地使用类别。由于这一点,可以预测特定区域文本调节的未来土地使用功能,并将所有带有特定土地使用类型的区域汇总。在异构规划信息作者的分类问题中使用K-Means算法和人工的提议解决方案神经网络。然而,此解决方案的主要挑战不是分类工具的设计,而是对文本的预处理。在本文中,提出了一种文本预处理的方法以及所选择的文本分类方法。工作结果表明,更多使用CNN的可用性来解决所呈现的问题。 K-means群集生成群集,其中根据土地使用函数未分组文本,这些功能在区域聚合的上下文中无用。

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