Graph convolutional autoencoder model for the shape coding and cognition of buildings in maps
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Title
Graph convolutional autoencoder model for the shape coding and cognition of buildings in maps
Authors
Keywords
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Journal
INTERNATIONAL JOURNAL OF GEOGRAPHICAL INFORMATION SCIENCE
Volume -, Issue -, Pages 1-23
Publisher
Informa UK Limited
Online
2020-05-25
DOI
10.1080/13658816.2020.1768260
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