Network SpaceTime AI: Concepts, Methods and Applications

SpacetimeAI and GeoAI are currently hot topics, applying the latest algorithms in computer science, such as deep learning, to spatiotemporal data. Although deep learning algorithms have been successfully applied to raster data due to their natural applicability to image processing, their application...

Full description

Bibliographic Details
Main Author: Tao CHENG,Yang ZHANG,James HAWORTH
Format: Article
Language:English
Published: Surveying and Mapping Press 2022-09-01
Series:Journal of Geodesy and Geoinformation Science
Subjects:
Online Access:http://jggs.chinasmp.com/fileup/2096-5990/PDF/1668663213341-859404354.pdf
Description
Summary:SpacetimeAI and GeoAI are currently hot topics, applying the latest algorithms in computer science, such as deep learning, to spatiotemporal data. Although deep learning algorithms have been successfully applied to raster data due to their natural applicability to image processing, their applications in other spatial and space-time data types are still immature. This paper sets up the proposition of using a network (&graph)-based framework as a generic spatial structure to present space-time processes that are usually represented by the points, polylines, and polygons. We illustrate network and graph-based SpaceTimeAI, from graph-based deep learning for prediction, to space-time clustering and optimisation. These applications demonstrate the advantages of network (graph)-based SpacetimeAI in the fields of transport&mobility, crime&policing, and public health.
ISSN:2096-5990