id |
cdrf2021_35 |
authors |
Yubo Liu, Chenrong Fang, Zhe Yang, Xuexin Wang, Zhuohong Zhou,
Qiaoming Deng, and Lingyu Liang |
year |
2021 |
title |
Exploration on Machine Learning Layout Generation of Chinese Private Garden in Southern Yangtze |
source |
Proceedings of the 2021 DigitalFUTURES
The 3rd International Conference on Computational Design and Robotic Fabrication (CDRF 2021) |
doi |
https://doi.org/https://doi.org/10.1007/978-981-16-5983-6_4
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summary |
Machine learning has been proved to be feasible and reasonable in architectural field by extensive researches recently, whereas its potential is far from being tapped. Previous studies show that the training of GAN by labelling can enable a computer to grasp interrelationship of spatial elements and logical relationship between spatial elements and boundary. This study set the learning object as layout of private gardens in southern Yangtze with higher complexity. Chinese scholars usually analyse private garden layout based on their observation and experience. In this paper, based on Pix2Pix model, we enable a computer to generate private garden layout plan for given site conditions by learning classic cases of traditional Chinese private gardens. Through the experiment, taking Lingering garden as example, we continuously adjust the labelling method to improve learning effect. The finally trained model can quickly generate private garden layout and aid designers to complete scheme design with private garden element corpus. In addition, the working process of training GAN enables us to discover and verify some private garden layout rules that have not been paid attention to. |
series |
cdrf |
email |
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full text |
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references |
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last changed |
2022/09/29 07:53 |
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