TY - JOUR
T1 - Automation in Interior Space Planning
T2 - Utilizing Conditional Generative Adversarial Network Models to Create Furniture Layouts
AU - Tanasra, Hanan
AU - Rott Shaham, Tamar
AU - Michaeli, Tomer
AU - Austern, Guy
AU - Barath, Shany
N1 - Publisher Copyright:
© 2023 by the authors.
PY - 2023/7/14
Y1 - 2023/7/14
N2 - In interior space planning, the furnishing stage usually entails manual iterative processes, including meeting design objectives, incorporating professional input, and optimizing design performance. Machine learning has the potential to automate and improve interior design processes while maintaining creativity and quality. The aim of this study was to develop a furnishing method that leverages machine learning as a means for enhancing design processes. A secondary aim was to develop a set of evaluation metrics for assessing the quality of the results generated from such methods, enabling comparisons between the performance of different models. To achieve these aims, floor plans were tagged and assembled into a comprehensive dataset that was then employed for training and evaluating three conditional generative adversarial network models (pix2pix, BicycleGAN, and SPADE) to generate furniture layouts within given room boundaries. Post-processing methods for improving the generated results were also developed. Finally, evaluation criteria that combine measures of architectural design with standard computer vision parameters were devised. Visual architectural analyses of the results confirm that the generated rooms adhere to accepted architectural standards. The numerical results indicate that BicycleGAN outperformed the two other models. Moreover, the overall results demonstrate a machine-learning workflow that can be used to augment existing interior design processes.
AB - In interior space planning, the furnishing stage usually entails manual iterative processes, including meeting design objectives, incorporating professional input, and optimizing design performance. Machine learning has the potential to automate and improve interior design processes while maintaining creativity and quality. The aim of this study was to develop a furnishing method that leverages machine learning as a means for enhancing design processes. A secondary aim was to develop a set of evaluation metrics for assessing the quality of the results generated from such methods, enabling comparisons between the performance of different models. To achieve these aims, floor plans were tagged and assembled into a comprehensive dataset that was then employed for training and evaluating three conditional generative adversarial network models (pix2pix, BicycleGAN, and SPADE) to generate furniture layouts within given room boundaries. Post-processing methods for improving the generated results were also developed. Finally, evaluation criteria that combine measures of architectural design with standard computer vision parameters were devised. Visual architectural analyses of the results confirm that the generated rooms adhere to accepted architectural standards. The numerical results indicate that BicycleGAN outperformed the two other models. Moreover, the overall results demonstrate a machine-learning workflow that can be used to augment existing interior design processes.
KW - CGANs
KW - image-to-image translation
KW - interior space planning
KW - machine learning
UR - http://www.scopus.com/inward/record.url?scp=85166247302&partnerID=8YFLogxK
U2 - 10.3390/buildings13071793
DO - 10.3390/buildings13071793
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AN - SCOPUS:85166247302
SN - 2075-5309
VL - 13
JO - Buildings
JF - Buildings
IS - 7
M1 - 1793
ER -