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Deep Layout of Custom-size Furniture through Multiple-domain Learning (2012.08131v1)

Published 15 Dec 2020 in cs.CV

Abstract: In this paper, we propose a multiple-domain model for producing a custom-size furniture layout in the interior scene. This model is aimed to support professional interior designers to produce interior decoration solutions with custom-size furniture more quickly. The proposed model combines a deep layout module, a domain attention module, a dimensional domain transfer module, and a custom-size module in the end-end training. Compared with the prior work on scene synthesis, our proposed model enhances the ability of auto-layout of custom-size furniture in the interior room. We conduct our experiments on a real-world interior layout dataset that contains $710,700$ designs from professional designers. Our numerical results demonstrate that the proposed model yields higher-quality layouts of custom-size furniture in comparison with the state-of-art model.

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Authors (6)
  1. Xinhan Di (35 papers)
  2. Pengqian Yu (19 papers)
  3. Danfeng Yang (2 papers)
  4. Hong Zhu (52 papers)
  5. Changyu Sun (4 papers)
  6. YinDong Liu (2 papers)