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3D Room Layout System Using IEC (Interactive Evaluational Computation)

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Synonyms

Interactive design; Interactive genetic algorithm; Interactive room layout

Definition

IEC is the interactive optimization system incorporating human tasks. 3D room layout system using IEC is the application of IEC, and it evolves layout according to the user preferences.

Introduction

Designers usually build renderings to create a new layout, and they reorganize it to fit a customer need. Furthermore, customers can understand shapes intuitively if they provide the 3D room layout. Numerical optimization approaches that optimize parameters constructing the 3D room layout can automate these works. However, it is difficult to create a model equation that emulates human thoughts because it is a subjective personal preference. Therefore, optimization systems incorporate the human tasks that evaluate the fitness of solutions manually. These systems usually use interactive evolutionary computation (IEC). This approach is similar to the process of improvement in animal and crop...

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Correspondence to Ryuya Akase .

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Akase, R., Okada, Y. (2015). 3D Room Layout System Using IEC (Interactive Evaluational Computation). In: Lee, N. (eds) Encyclopedia of Computer Graphics and Games. Springer, Cham. https://doi.org/10.1007/978-3-319-08234-9_34-1

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  • DOI: https://doi.org/10.1007/978-3-319-08234-9_34-1

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  • Online ISBN: 978-3-319-08234-9

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