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Test the configuration and color of 3D model space design with web multimedia interface

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Abstract

Color has the function of conveying information and presenting psychological feelings. Different space colors are matched with 3D models to present different interior design styles. The interior space color is a 3D color expression. Psychological perception effects. The theme of this study is the color matching emotion of interior space design color, and the 3D model design and bedroom design experiment is used to study the emotional design elements and various emotional evaluations of 3D model design and bedroom color. It is divided into 2 experiments: Experiment 1, The most suitable 3D model design furniture experiment, test the most suitable 4 kinds of 3D model design samples. Experiment 2, Bedroom color suitability experiment, study the most suitable bedroom color, and finally experiment and analyze the results to determine the most suitable bedroom color design. The research results show that the most suitable bedroom room color design is Cream, followed by Dark gray, Baby blue, and Pale Denim. Although this study takes 3D model and bedroom as the experimental object, the results of the experiment have more theoretical and practical reference basis for the future color and furniture style design of other interior spaces, and provide reference directions for researchers.

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Funding

Supported by Fujian Province Science, Grant Number: FJ2022B112

Sanming University, Research Foundation for Advanced Talent, Grant Number: 21YG02S.

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Although this study adopts design-based online teaching in the experiment, the experimental results provide theoretical and practical directions for online teaching selection. This study can provide a reference for educators and researchers.

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Correspondence to Tsuiyueh Chang.

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The authors declare that they do not have any competing financial interests or any personal relationships that could seem to have influenced the work presented by this paper. All the authors declared that they have no conflict of interest in this work.

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Kuo, L., Lin, Y., Chang, T. et al. Test the configuration and color of 3D model space design with web multimedia interface. Multimed Tools Appl 83, 33107–33121 (2024). https://doi.org/10.1007/s11042-023-17000-6

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  • DOI: https://doi.org/10.1007/s11042-023-17000-6

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