4.6 Article

Building Function Recognition Using the Semi-Supervised Classification

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 19, Pages -

Publisher

MDPI
DOI: 10.3390/app12199900

Keywords

graph neural network; semi-supervised learning; building function classification; POI

Funding

  1. Open Fund of Key Laboratory of Urban Land Resources Monitoring and Simulation, Ministry of Natural Resources, China [KF-2020-05-068]

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The functional classification of buildings is important for urban planning and government departments. A semi-supervised graph structure network combined with a unified message passing model is introduced for building function recognition. By utilizing the spatial distribution, characteristics, and POIs information of buildings, this method can capture more meaningful information with limited labels and achieve better classification results.
The functional classification of buildings is important for creating and managing urban zones and assisting government departments. Building function recognition is incredibly valuable for wide applications ranging from the determination of energy demand. By aiming at the topic of urban function classification, a semi-supervised graph structure network combined unified message passing model was introduced. The data of this model include spatial location distribution of buildings, building characteristics and the information mined from points of interesting (POIs). In order to extract the context information, each building was regarded as a graph node. Building characteristics and corresponding POIs information were embedded to mine the building function by the graph convolutional neural network. When training the model, several node labels in the graph were masked, and then these labels were predicted by the trained model so that this work could take full advantage of the node label and the feature information of all nodes in both the training and prediction stages. Quasi-experiments proved that the proposed method for building function classification using multi-source data enables the model to capture more meaningful information with limited labels, and it achieves better function classification results.

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