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Deep Layout of Custom-size Furniture through Multiple-domain Learning

15 December 2020
Xinhan Di
Pengqian Yu
Danfeng Yang
Hong Zhu
Changyu Sun
YinDong Liu
    3DV
    3DPC
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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 710,700710,700710,700 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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