Applying CNN Classifier to Road Interchange Classification

2018 
The identification and classification of interchange structures in OSM (Open Street Map) data can provide important information for the construction of multi-scale model, navigation and location services, congestion analysis, etc. The traditional method of interchange identification relies on the low-level characteristics of artificial design, and cannot distinguish the complex interchange structure with interferences effectively. In this paper, a new method based on convolutional neural network for identification of the interchange is proposed. The method combines vector data with raster image, and uses neural network to learn the fuzzy characteristics of the interchange, and classifies the complex interchange structure in OSM. Experiments show that this method has strong anti-interference, and has achieved good results in the classification of complex interchanges, and there is room for further improvement with the expansion of the sample base and the optimization of neural network model.
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