2021
DOI: 10.48550/arxiv.2111.04006
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A Review of Location Encoding for GeoAI: Methods and Applications

Gengchen Mai,
Krzysztof Janowicz,
Yingjie Hu
et al.

Abstract: A common need for artificial intelligence models in the broader geoscience is to represent and encode various types of spatial data, such as points (e.g., points of interest), polylines (e.g., trajectories), polygons (e.g., administrative regions), graphs (e.g., transportation networks), or rasters (e.g., remote sensing images), in a hidden embedding space so that they can be readily incorporated into deep learning models. One fundamental step is to encode a single point location into an embedding space, such … Show more

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