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Integrating aesthetics and efficiency: AI-driven diffusion models for visually pleasing interior design generation

Junming Chen, Zichun Shao, Xiaodong Zheng, Kai Zhang, Jun Yin

2024Scientific Reports39 citationsDOIOpen Access PDF

Abstract

The interior design suffers from inefficiency and a lack of aesthetic appeal. With the development of artificial intelligence diffusion models, using text descriptions to generate aesthetically pleasing designs has emerged as a new approach to address these issues. In this study, we propose a novel method based on the aesthetic diffusion model, which can quickly generate visually appealing interior design based on input text descriptions while allowing for the specification of decorative styles and spatial functions. The method proposed in this study creates creative designs and drawings by computer instead of from designers, thus improving the design efficiency and aesthetic appeal. We demonstrate the potential of this approach in the field of interior design through our research. The results indicate that: (1) The method efficiently provides designers with aesthetically pleasing interior design solutions; (2) By modifying the text descriptions, the method allows for the rapid regeneration of design solutions; (3) Designers can apply this highly flexible method to other design fields through fine-tuning. (4) The method optimizes the workflow of interior design.

Topics & Concepts

Computer scienceInterior designWorkflowField (mathematics)Human–computer interactionInefficiencyEngineering drawingArchitectural engineeringDatabaseMathematicsEngineeringMicroeconomicsEconomicsPure mathematicsAesthetic Perception and AnalysisColor perception and designDigital Media and Visual Art
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