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Interior Space Design and Automatic Layout Method Based on CNN

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  • WeiPing Wu
  • Yanshun Feng
  • Man Fai Leung

Abstract

With the rapid rise in the number of people buying houses, the demand for interior space design has also increased accordingly. The diversification of existing room types and the diversity of the public’s perception of fashion make interior designers in short supply. The future of computer science and technology in the field of automatic design of indoor areas will be immeasurable. This paper proposes an automatic layout method for spatial area design based on convolutional neural networks (CNN). CNN methods are a fast and efficient method. By mimicking the designer’s design process, it proposes a two-stage algorithm that defines the room first and the wall later, and the algorithm also provides a large-scale dataset called RPLAN that contains more than 80,000 interior layout plans from real residential buildings. Starting from the prediction living room, the automatic layout of the indoor areas is completed by iteration. A large number of empirical results show that the interior area design effect of this method is comparable to the interior design floor plan of professional designers.

Suggested Citation

  • WeiPing Wu & Yanshun Feng & Man Fai Leung, 2022. "Interior Space Design and Automatic Layout Method Based on CNN," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-14, April.
  • Handle: RePEc:hin:jnlmpe:8006069
    DOI: 10.1155/2022/8006069
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