WallPlan

Author:

Sun Jiahui1,Wu Wenming1,Liu Ligang2,Min Wenjie1,Zhang Gaofeng1,Zheng Liping1

Affiliation:

1. Hefei University of Technology, China

2. University of Science and Technology of China, China

Abstract

Floorplan generation has drawn widespread interest in the community. Recent learning-based methods for generating realistic floorplans have made significant progress while a complex heuristic post-processing is still necessary to obtain desired results. In this paper, we propose a novel wall-oriented method, called WallPlan , for automatically and efficiently generating plausible floorplans from various design constraints. We pioneer the representation of the floorplan as a wall graph with room labels and consider the floorplan generation as a graph generation. Given the boundary as input, we first initialize the boundary with windows predicted by WinNet. Then a graph generation network GraphNet and semantics prediction network LabelNet are coupled to generate the wall graph progressively by imitating graph traversal. WallPlan can be applied for practical architectural designs, especially the wall-based constraints. We conduct ablation experiments, qualitative evaluations, quantitative comparisons, and perceptual studies to evaluate our method's feasibility, efficacy, and versatility. Intensive experiments demonstrate our method requires no post-processing, producing higher quality floorplans than state-of-the-art techniques.

Funder

the Fundamental Research Funds for the Central Universities of China

the National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference47 articles.

1. Modeling architectural design objectives in physically based space planning

2. Generating and exploring good building layouts;Bao Fan;ACM Transactions on Graphics (TOG),2013

3. Look over here: Attention-directing composition of manga elements;Cao Ying;ACM Transactions on Graphics (TOG),2014

4. Stanislas Chaillou . 2020. ArchiGAN: Artificial Intelligence x Architecture . In Architectural Intelligence . Springer , 117--127. Stanislas Chaillou. 2020. ArchiGAN: Artificial Intelligence x Architecture. In Architectural Intelligence. Springer, 117--127.

5. A PSO-based intelligent decision algorithm for VLSI floorplanning

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