Toward Improving Procedural Terrain Generation With GANs
Mattull, William A.
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CitationMattull, William A. 2020. Toward Improving Procedural Terrain Generation With GANs. Master's thesis, Harvard Extension School.
AbstractThe advance of Generative Adversarial Networks (GANs) are able to create new and meaningful outputs given arbitrary encodings for three dimensional terrain generation. Using a two-stage GAN network, this novel system takes the terrain heightmap as the ﬁrst processing object, and then maps the real texture image onto the heightmap according to the learned network. The synthetic terrain image results perform well and are realistic. However, improvements can be made to generator stability during training.
Citable link to this pagehttps://nrs.harvard.edu/URN-3:HUL.INSTREPOS:37365041