id |
sigradi2023_417 |
authors |
Nogueira, Alex and Romao, Luís |
year |
2023 |
title |
room_ID: An architectonic image classifier tool correlating machine learning and the domestic space |
source |
García Amen, F, Goni Fitipaldo, A L and Armagno Gentile, Á (eds.), Accelerated Landscapes - Proceedings of the XXVII International Conference of the Ibero-American Society of Digital Graphics (SIGraDi 2023), Punta del Este, Maldonado, Uruguay, 29 November - 1 December 2023, pp. 1833–1843 |
summary |
There are still considerable gaps in the relationship between artificial intelligence (AI) and architecture, both in the field of computer-aided architectural design and the everyday spatial experience. Therefore, we sought to build a bridge through correlating machine learning (ML), one of the significant branches of AI, and the domestic space, probably the most experienced architectonic space. Thus, our utmost goal is to develop an architectonic image classifier tool that allows the computer to identify the rooms that generally compound an ordinary dwelling. Our approach includes a brief theoretical background, the development of the room_ID app, and, afterward, discussions are presented. In the stage of the room_ID application development, a five-phase framework is proposed: a) Class definition; b) Database criteria; c) Image collection; d) Tool development; and e) Preliminary validation. Therefore, the room_ID tool provides us with a possible way to recognize the specificities of architectonic spaces rendered as computational data. |
keywords |
Artificial Intelligence, Machine Learning, Domesticity, Architectonic image classifier Tool, Room labels. |
series |
SIGraDi |
email |
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full text |
file.pdf (5,408,109 bytes) |
references |
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last changed |
2024/03/08 14:09 |
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