This work is licensed under the Creative Commons Attribution 4.0 International License.
Caetano I, Santos L & Leitão A (2020) Computational design in architecture: Defining parametric, generative, and algorithmic design. Frontiers of Architectural Research 9:287–300.CaetanoISantosLLeitãoA2020Computational design in architecture: Defining parametric, generative, and algorithmic designFrontiers of Architectural Research9287300Search in Google Scholar
Caldas L (2008) Generation of energy-efficient architecture solutions applying GENE_ARCH: An evolution-based generative design system. Advanced Engineering Informatics 22:59–70.CaldasL2008Generation of energy-efficient architecture solutions applying GENE_ARCH: An evolution-based generative design systemAdvanced Engineering Informatics225970Search in Google Scholar
Queiroz N, Dantas N, Nome C & Vaz C. Designing a Building envelope using parametric and algorithmic processes. (2015).QueirozNDantasNNomeCVazCDesigning a Building envelope using parametric and algorithmic processes2015Search in Google Scholar
Merrell P, Schkufza E & Koltun V. in ACM SIGGRAPH Asia 2010 papers on – SIGGRAPH ASIA ’10 (2010).MerrellPSchkufzaEKoltunV.inACM SIGGRAPH Asia 2010 papers on – SIGGRAPH ASIA ’102010Search in Google Scholar
Arvin SA, House DH (2002) Modeling architectural design objectives in physically based space planning. Automation in Construction.ArvinSAHouseDH2002Modeling architectural design objectives in physically based space planningAutomation in ConstructionSearch in Google Scholar
Ahmed S, Weber M, Liwicki M, Langenhan C, Dengel A & Petzold F (2014) Automatic analysis and sketch-based retrieval of architectural floor plans. Pattern Recognition Letters 35:91–100.AhmedSWeberMLiwickiMLangenhanCDengelAPetzoldF2014Automatic analysis and sketch-based retrieval of architectural floor plansPattern Recognition Letters3591100Search in Google Scholar
Goodfellow IJ, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Courville A & Bengio YJaPA (2014) Generative adversarial networks.GoodfellowIJPouget-AbadieJMirzaMXuBWarde-FarleyDOzairSCourvilleABengioYJaPA2014Generative adversarial networksSearch in Google Scholar
Gidaris S, Singh P & Komodakis NJaPA (2018) Unsupervised representation learning by predicting image rotations.GidarisSSinghPKomodakisNJaPA2018Unsupervised representation learning by predicting image rotationsSearch in Google Scholar
Isola P, Zhu J-Y, Zhou T & Efros AA. in Proceedings of the IEEE conference on computer vision and pattern recognition. 1125–1134.IsolaPZhuJ-YZhouTEfrosAAinProceedings of the IEEE conference on computer vision and pattern recognition11251134Search in Google Scholar
Chaillou SJHU (2019) AI+ Architecture: Towards a New Approach.ChaillouSJHU2019AI+ Architecture: Towards a New ApproachSearch in Google Scholar
Nauata N, Chang K-H, Cheng C-Y, Mori G & Furukawa Y. in Computer Vision – ECCV 2020. (eds Andrea Vedaldi, Horst Bischof, Thomas Brox, & Jan-Michael Frahm) 162–177 (Springer International Publishing).NauataNChangK-HChengC-YMoriGFurukawaYinComputer Vision – ECCV 2020edsVedaldiAndreaBischofHorstBroxThomasFrahmJan-Michael162177Springer International PublishingSearch in Google Scholar
Bafna SJE & Behavior (2003) Space syntax: A brief introduction to its logic and analytical techniques. 35:17–29.Bafna SJE & Behavior2003Space syntax: A brief introduction to its logic and analytical techniques351729Search in Google Scholar
Yu Z & Jianguo W (2004) On “Space Syntax” Again. The Architect 3:33–44.YuZJianguoW2004On “Space Syntax” AgainThe Architect33344Search in Google Scholar
Fischer G, Giaccardi E, Ye Y, Sutcliffe AG & Mehandjiev NJCOTA (2004) Meta-design: a manifesto for end-user development. 47:33–37.FischerGGiaccardiEYeYSutcliffeAGMehandjievNJCOTA2004Meta-design: a manifesto for end-user development473337Search in Google Scholar