262
Views
0
CrossRef citations to date
0
Altmetric
Research Article

Artificial Intelligence to Facilitate the Conceptual Stage of Interior Space Design: Conditional Generative Adversarial Network-Supported Long-Term Care Space Floor Plan Design of Retirement Home Buildings

, , , ORCID Icon, ORCID Icon, , ORCID Icon & show all
Article: 2354090 | Received 13 Nov 2023, Accepted 05 May 2024, Published online: 14 May 2024

References

  • Abu-Srhan, A., M. A. M. Abushariah, and O. S. Al-Kadi. 2022. The effect of loss function on conditional generative adversarial networks. Journal of King Saud University - Computer and Information Sciences 34 (9):6977–43. doi:10.1016/j.jksuci.2022.02.018
  • Alqahtani, H., M. Kavakli-Thorne, and G. Kumar. 2021. Applications of generative adversarial networks (gans): An updated review. Archives of Computational Methods in Engineering 28 (2):525–52. doi:10.1007/s11831-019-09388-y
  • Anantrasirichai, N., and D. Bull. 2022. Artificial intelligence in the creative industries: A review. Artificial Intelligence Review 55 (1):589–656. doi:10.1007/s10462-021-10039-7
  • Anderl, R., and R. Mendgen, 1995, December. Parametric design and its impact on solid modeling applications. Proceedings of the third ACM symposium on Solid modeling and applications (pp. 1–12). Available online: doi:10.1145/218013.218018
  • Bloom, D. E., A. Boersch-Supan, P. McGee, and A. Seike. 2011. Population aging: Facts, challenges, and responses. Benefits and Compensation International 41 (1):22. Available online. https://core.ac.uk/download/pdf/6494803.pdf
  • Brauksiepe, M., M. Dollendorf, T. Santehanser, S. Wilkop, and P. Schönfelder. 2023. Towards the rule-based synthesis of realistic floor plan images. Available online. doi:10.13154/294-10089
  • Chen, G., and G. Chaudhary. 2022. A data-driven intelligent system for assistive design of interior environments. Computational Intelligence and Neuroscience 2022:1–11. doi:10.1155/2022/8409495
  • Cohen, J. E. 2003. Human population: The next half century. Science 302 (5648):1172–75. doi:10.1126/science.1088665
  • Cui, X., and W. Chung. 2023. Interior design of aging housing based on smart home system of IOT sensor. Journal of Sensors. doi:10.1155/2023/9281248
  • DeMello, K., 2016. Healing through design: The psychological effects of design on the elderly. Doctoral dissertation., Honolulu:University of Hawaii at Manoa. December 2016.
  • DeVries, T., A. Romero, L. Pineda, G. W. Taylor, and M. Drozdzal. 2019. On the evaluation of conditional GANs. ArXiv Preprint 08175. doi:10.48550/arXiv.1907.08175
  • Dong, J., Y. Guo, and L. Jiang. 2014. The public space design based on the living needs of the elderly. Applied Mechanics and Materials 584-586:796–800. doi:10.4028/www.scientific.net/AMM.584-586.796
  • Douzas, G., and F. Bacao. 2018. Effective data generation for imbalanced learning using conditional generative adversarial networks. Expert Systems with Applications 91:464–71. doi:10.1016/j.eswa.2017.09.030
  • Duhachek, A., A. T. Coughlan, and D. Iacobucci. 2005. Results on the standard error of the coefficient alpha index of reliability. Marketing Science 24 (2):294–301. doi:10.1287/mksc.1040.0097
  • Durgadevi, M. 2021. Generative adversarial network (gan): A general review on different variants of gan and applications. 2021 6th International Conference on Communication and Electronics Systems (ICCES) (pp. 1–8). Coimbatre, India: IEEE Press. Available online: https://ieeexplore.ieee.org/document/9489160
  • Fan, J., T. Liu, G. Shen, J. Chen, Y. Li, and X. Du. 2020. Relational data synthesis using generative adversarial networks: A design space exploration. ArXiv Preprint 13 (12):1962–75. doi:10.48550/arXiv.2008.12763
  • Feng, Z., E. Glinskaya, H. Chen, S. Gong, Y. Qiu, J. Xu, and W. Yip. 2020. Long-term care system for older adults in China: Policy landscape, challenges, and future prospects. The Lancet 396 (10259):1362–72. doi:10.1016/S0140-6736(20)32136-X
  • Feng, X. T., D. L. Poston Jr, and X. T. Wang. 2014. China’s one-child policy and the changing family. Journal of Comparative Family Studies 45 (1):17–29. doi:10.3138/jcfs.45.1.17
  • Fleming, R., and N. Purandare. 2010. Long-term care for people with dementia: Environmental design guidelines. International Psychogeriatrics 22 (7):1084–96. doi:10.1017/S1041610210000438
  • Fulop, T., A. Larbi, J. M. Witkowski, J. McElhaney, M. Loeb, A. Mitnitski, and G. Pawelec. 2010. Aging, frailty and age-related diseases. Biogerontology 11 (5):547–63. doi:10.1007/s10522-010-9287-2
  • Grohnfeldt, C., M. Schmitt, and X. Zhu (2018, July). A conditional generative adversarial network to fuse SAR and multispectral optical data for cloud removal from sentinel-2 images. IGARSS 2018-2018 IEEE International Geoscience and Remote Sensing Symposium. 1726–29. IEEE. Available online: https://ieeexplore.ieee.org/abstract/document/8519215
  • Hongyan, S. 2003. The current status of Chinese children. Journal of Family and Economic Issues 24 (4):337–53. doi:10.1023/A:1027329309556
  • Horvath, A. S., and P. Pouliou. 2024. AI for conceptual architecture: Reflections on designing with text-to-text, text-to-image, and image-to-image generators. Frontiers of Architectural Research. doi:10.1016/j.foar.2024.02.006
  • Jian, Z., and Z. Chen. 2020. Automatic generation of high-rise residential building layout design based on deep learning. Architectural Journal 10:43–49. in Chinese.
  • Jovanović, D., B. Milenković, and M. Krstić. 2020. Application of grasshopper optimization algorithm in mechanical engineering. In YOURS 2020 Young Researchers Conference. Belgrade, September 22.
  • Kakooee, R., and B. Dillenburger. 2024. Reimagining space layout design through deep reinforcement learning. Journal of Computational Design and Engineering 11 (3):43–55. doi:10.1093/jcde/qwae025
  • Kane, R. A. 2001. Long-term care and a good quality of life: Bringing them closer together. The Gerontologist 41 (3):293–304. doi:10.1093/geront/41.3.293
  • Khean, N., A. Fabbri, and M. H. Haeusler. 2018. Learning machine learning as an architect, how to. In Proceedings of the 36th eCAADe Conference (Vol. 1, 95–102). https://papers.cumincad.org/data/works/att/eCAADe_2018_volume1_screen_lowres_SCOPUS.pdf#page=109
  • Kirimtat, A., B. Ekici, C. Cubukcuoglu, S. Sariyildiz, and F. Tasgetiren. 2019. Evolutionary Algorithms for Designing Self-sufficient Floating Neighborhoods. In Optimization in Industry. Management and Industrial Engineering, ed. S. Datta and J. Davim, 121–47. Cham: Springer. doi:10.1007/978-3-030-01641-8_6
  • Labib, R. (2022, September). Integrating machine learning with parametric modeling environments to predict building daylighting performance. In IOP Conference Series: Earth and Environmental Science (Vol. 1085, 012006). IOP Publishing.
  • Lam, T. Y., and J. Yan. 2022. Continuing care retirement community senior housing in Shanghai: An analysis of the development barriers. International Journal of Housing Markets and Analysis 15 (4):780–99. doi:10.1108/IJHMA-04-2021-0038
  • Lin, H., L. Huang, Y. Chen, L. Zheng, M. Huang, and Y. Chen. 2023. Research on the application of CGAN in the design of historic building facades in urban renewal—taking Fujian Putian historic districts as an example. Buildings 13 (6):1478. doi:10.3390/buildings13061478
  • Liu, S., H. Jin, B. Xie, C. Liu, and A. Mills. 2018. Concession period determination for PPP retirement village. International Journal of Strategic Property Management 22 (5):424–35. doi:10.3846/ijspm.2018.5476
  • Li, J., J. Yang, J. Zhang, C. Liu, C. Wang, and T. Xu. 2020. Attribute-conditioned layout gan for automatic graphic design. IEEE Transactions on Visualization and Computer Graphics 27 (10):4039–48. doi:10.1109/TVCG.2020.2999335
  • Lowenthal, M. F. 1964. Social isolation and mental illness in old age. American Sociological Review 29 (1):54–70. doi:10.2307/2094641
  • Mao, G., F. Lu, X. Fan, and D. Wu. 2020. China’s ageing population: The present situation and prospects. In Population Change and Impacts in Asia and the Pacific. New Frontiers in Regional Science: Asian Perspectives, ed. J. Poot and M. Roskruge, vol. 30, 269–87. Singapore: Springer. doi:10.1007/978-981-10-0230-4_12
  • Miano, J. 1999. Compressed image file formats: Jpeg, png, gif, xbm, bmp. New York, United States: Addison-Wesley Professional.
  • Min, X., L. Zheng, and Y. Chen. 2023. The floor plan design method of exhibition halls in CGAN-assisted museum architecture. Buildings 13 (3):756. doi:10.3390/buildings13030756
  • Min, X., L. Zheng, and Y. Chen. 2023. The floor plan design method of exhibition halls in CGAN-Assisted museum architecture. Buildings 13 (3):756. doi:10.3390/buildings13030756.
  • Mishra, P., and I. Herrmann. 2021. GAN meets chemometrics: Segmenting spectral images with pixel2pixel image translation with conditional generative adversarial networks. Chemometrics and Intelligent Laboratory Systems 215:104362. doi:10.1016/j.chemolab.2021.104362
  • Nguyen, A., S. Reiter, and P. Rigo. 2014. A review on simulation-based optimization methods applied to building performance analysis. Applied Energy 113:1043–58. doi:10.1016/j.apenergy.2013.08.061
  • Odena, A., C. Olah, and J. Shlens 2017. Conditional image synthesis with auxiliary classifier gans. International conference on machine learning, Sydney NSW Australia, 2642–51. PMLR.
  • Park, S., and H. Kim. 3, 2021. PlaNet: Generating 3D models from 2D floor plan images using ensemble methods. Electronics 10 (22):2729. doi:10.3390/electronics10222729
  • Perarnau, G., J. Van De Weijer, B. Raducanu, and J. M. Álvarez. 2016. Invertible conditional gans for image editing. arXiv preprint arXiv:1611, 06355. doi:10.48550/arXiv.1611.06355
  • Preisinger, C., and M. Heimrath. 2014. Karamba—a toolkit for parametric structural design. Structural Engineering International 24 (2):217–21. doi:10.2749/101686614X13830790993483
  • Rahbar, M., M. Mahdavinejad, M. Bemanian, A. H. Davaie Markazi, and L. Hovestadt. 2019. Generating synthetic space allocation probability layouts based on trained conditional-GANs. Applied Artificial Intelligence 33 (8):689–705. doi:10.1080/08839514.2019.1592919
  • Rahmanifard, H., and T. Plaksina. 2019. Application of artificial intelligence techniques in the petroleum industry: A review. Artificial Intelligence Review 52 (4):2295–318. doi:10.1007/s10462-018-9612-8
  • Rosenberg, B. G., and Q. Jing. 1996. A revolution in family life: The political and social structural impact of China’s one child policy. Journal of Social Issues 52 (3):51–69. doi:10.1111/j.1540-4560.1996.tb01579.x
  • Salehi, P., A. Chalechale, and M. Taghizadeh. 2020. Generative adversarial networks (GANs): An overview of theoretical model, evaluation metrics, and recent developments. ArXiv Preprint 13178.
  • Sampath, V., I. Maurtua, J. J. Aguilar Martin, and A. Gutierrez. 2021. A survey on generative adversarial networks for imbalance problems in computer vision tasks. Journal of Big Data 8 (1):1–59. doi:10.1186/s40537-021-00414-0
  • Shrestha, N. 2021. Factor analysis as a tool for survey analysis. American Journal of Applied Mathematics and Statistics 9 (1):4–11. Available online. http://article.sciappliedmathematics.com/pdf/AJAMS-9-1-2.pdf
  • Skorokhodov, I., S. Ignatyev, and M. Elhoseiny, 2021. Adversarial generation of continuous images. Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, 10753–64. Available online: https://openaccess.thecvf.com/content/CVPR2021/papers/Skorokhodov_Adversarial_Generation_of_Continuous_Images_CVPR_2021_paper.pdf
  • Su, Z., Z. Hu, and X. Peng. 2017. The impact of changes in China’s family patterns on family pension functions. The International Journal of Health Planning and Management 32 (3):351–62. doi:10.1002/hpm.2436
  • Sun, C., Y. Zhou, and Y. Han. 2022. Automatic generation of architecture facade for historical urban renovation using generative adversarial network. Building and Environment 212:108781. doi:10.1016/j.buildenv.2022.108781
  • Tanasra, H., T. Rott Shaham, T. Michaeli, G. Austern, and S. Barath. 2023. Automation in interior space planning: Utilizing conditional generative adversarial network models to create furniture layouts. Buildings 13 (7):1793. doi:10.3390/buildings13071793
  • Weber, R. E., C. Mueller, and C. Reinhart. 2022. Automated floorplan generation in architectural design: A review of methods and applications. Automation in Construction 140:104385. doi:10.1016/j.autcon.2022.104385
  • Xueying, A., Z. Chen, S. Yimin, and J. Beisi. 2021. Facade generation method for high-rise buildings based on deep convolution generative adversarial networks model. Huazhong Architecture 39 (9):114–20. (in Chinese).
  • Yao, J., J. Wang, I. W. Tsang, Y. Zhang, J. Sun, C. Zhang, and R. Zhang. 2018. Deep learning from noisy image labels with quality embedding. IEEE Transactions on Image Processing 28 (4):1909–22. Available online. https://ieeexplore.ieee.org/abstract/document/8506425
  • Ying, G. 2003. Spare-time life of Chinese children. Journal of Family and Economic Issues 24 (4):365–71. doi:10.1023/A:1027333410464
  • Yu, H., M. Spenko, and S. Dubowsky. 2003. An adaptive shared control system for an intelligent mobility aid for the elderly. Autonomous Robots 15 (1):53–66. doi:10.1023/A:1024488717009
  • Yu, T., and R. Wang. 2020. Design and management system of intelligent pension space positioning based on BIM technology. doi:10.21203/rs.3.rs-41744/v1
  • Zeynivandnezhad, F., F. Rashed, and A. Kanooni. 2019. Exploratory factor analysis for TPACK among mathematics teachers: Why, what and how. Anatolian Journal of Education 4 (1):59–76.
  • Zhang, L., L. Zheng, Y. Chen, L. Huang, and S. Zhou. 2022. CGAN-assisted renovation of the styles and features of street facades—A case study of the Wuyi area in Fujian, china. Sustainability 14 (24):16575. doi:10.3390/su142416575
  • Zheng, T., and X. Bingren. 2006. From “painter” to “master”—the deepening of architects’ functions in parametric design. New Architecture 1: 94–97. in ChineseAvailable online. http://www.cqvip.com/qk/93650x/200601/23286328.html