To facilitate the reconstruction of high-quality road networks, intersections as the key locations provide valuable information about the network topology. However, only a few efforts have been made on the data-driven automatic detection of intersections from, e.g., large-scale GPS trajectories. To bridge the gap, we propose a machine learning based intersection detection approach based on large-scale real-world GPS trajectories of drivers from the Grab ride-hailing service. Instead of representing locations with vector descriptors, we innovatively propose a graph representation that models a location together with its local surroundings to improve the descriptiveness of the location descriptors. Moreover, we present a multi-scale graph convolutional network (GCN) to generate robust graph-level descriptors, followed by logistic regression to discriminate intersections from non-intersections. The experimental results show that our proposed multi-scale graph model outperforms the conventional multi-scale vector representation by 8.5%. Appealingly, the proposed graph representation can be considered as a general location descriptor, which can be used in a variety of geo-based applications other than intersection detection for location modeling.
CITATION STYLE
Yin, Y., Sunderrajan, A., Huang, X., Varadarajan, J., Wang, G., Sahrawat, D., … Ng, S. K. (2019). Multi-scale graph convolutional network for intersection detection from GPS trajectories. In Proceedings of the 3rd ACM SIGSPATIAL International Workshop on AI for Geographic Knowledge Discovery, GeoAI 2019 (pp. 36–39). Association for Computing Machinery, Inc. https://doi.org/10.1145/3356471.3365234
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