Classification of Spatial Objects with the Use of Graph Neural Networks

被引:3
作者
Kaczmarek, Iwona [1 ]
Iwaniak, Adam [2 ,3 ]
Swietlicka, Aleksandra [3 ,4 ]
机构
[1] Wroclaw Univ Environm & Life Sci, Inst Spatial Management, PL-50375 Wroclaw, Poland
[2] Wroclaw Univ Environm & Life Sci, Inst Geodesy & Geoinformat, PL-50375 Wroclaw, Poland
[3] Wroclaw Inst Spatial Informat & Artificial Intelli, PL-50374 Wroclaw, Poland
[4] Poznan Univ Tech, Inst Automat Control & Robot, PL-60965 Poznan, Poland
关键词
graph neural networks; spatial objects; spatial development plan; supervised classification; machine learning;
D O I
10.3390/ijgi12030083
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Classification is one of the most-common machine learning tasks. In the field of GIS, deep-neural-network-based classification algorithms are mainly used in the field of remote sensing, for example for image classification. In the case of spatial data in the form of polygons or lines, the representation of the data in the form of a graph enables the use of graph neural networks (GNNs) to classify spatial objects, taking into account their topology. In this article, a method for multi-class classification of spatial objects using GNNs is proposed. The method was compared to two others that are based solely on text classification or text classification and an adjacency matrix. The use case for the developed method was the classification of planning zones in local spatial development plans. The experiments indicated that information about the topology of objects has a significant impact on improving the classification results using GNNs. It is also important to take into account different input parameters, such as the document length, the form of the training data representation, or the network architecture used, in order to optimize the model.
引用
收藏
页数:17
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