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HyNet: A novel hybrid deep learning approach for efficient interior design texture retrieval

Junming Chen, Zichun Shao, Caichun Cen, Jiaqi Li

2023Multimedia Tools and Applications23 citationsDOIOpen Access PDF

Abstract

Abstract Interior designers are suffering from a lack of intelligent design methods. This study aims to enhance the accuracy and efficiency of retrieval textures for interior design, which is a crucial step toward intelligent design. Currently, interior designers rely on repetitive tasks to obtain textures from websites, which is ineffective as a interior design often requires hundreds of textures. To address this issue, this study proposes a hybrid deep learning approach, HyNet, which boosts retrieval efficiency by recommending similar textures instead of blindly searching. Additionally, a new indoor texture dataset is created to support the application of artificial intelligence in this field. The results demonstrate that the proposed method’s ten recommended images achieve a high accuracy rate of 91.41%. This is a significant improvement in efficiency, which can facilitate the design industry’s progression towards intelligence. Overall, this study offers a promising solution to the challenges facing interior designers, and it has the potential to significantly enhance the industry’s productivity and innovation.

Topics & Concepts

Computer scienceField (mathematics)Artificial intelligenceInterior designTexture (cosmology)Deep learningProductivityMachine learningImage (mathematics)Architectural engineeringPure mathematicsEconomicsEngineeringMacroeconomicsMathematicsImage Retrieval and Classification TechniquesAesthetic Perception and AnalysisDigital Media and Visual Art