House-GAN: Relational Generative Adversarial Networks for
Graph-constrained House Layout Generation
- URL: http://arxiv.org/abs/2003.06988v1
- Date: Mon, 16 Mar 2020 03:16:12 GMT
- Title: House-GAN: Relational Generative Adversarial Networks for
Graph-constrained House Layout Generation
- Authors: Nelson Nauata, Kai-Hung Chang, Chin-Yi Cheng, Greg Mori, Yasutaka
Furukawa
- Abstract summary: The main idea is to encode the constraint into the graph structure of its relational networks.
We have demonstrated the proposed architecture for a new house layout generation problem.
- Score: 59.86153321871127
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper proposes a novel graph-constrained generative adversarial network,
whose generator and discriminator are built upon relational architecture. The
main idea is to encode the constraint into the graph structure of its
relational networks. We have demonstrated the proposed architecture for a new
house layout generation problem, whose task is to take an architectural
constraint as a graph (i.e., the number and types of rooms with their spatial
adjacency) and produce a set of axis-aligned bounding boxes of rooms. We
measure the quality of generated house layouts with the three metrics: the
realism, the diversity, and the compatibility with the input graph constraint.
Our qualitative and quantitative evaluations over 117,000 real floorplan images
demonstrate that the proposed approach outperforms existing methods and
baselines. We will publicly share all our code and data.
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