Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data

The Reich Chancellery, built by Albert Speer, was designed with an overwhelming ambience to represent the worldview of Hitler. The interior of the Reich Chancellery comprised high-ceiling and low-ceiling spaces. In this study, the change in a person’s emotions according to the ceiling height while m...

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Main Authors: Seung Yeul Ji, Se Yeon Kang, Han Jong Jun
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/17/6716
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spelling doaj-0f385b2ffe0648c6ab45e2688ef253e72020-11-25T03:11:30ZengMDPI AGSustainability2071-10502020-08-01126716671610.3390/su12176716Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography DataSeung Yeul Ji0Se Yeon Kang1Han Jong Jun2School of Architecture, Hanyang University, Seoul 04763, KoreaSchool of Architecture, Hanyang University, Seoul 04763, KoreaSchool of Architecture, Hanyang University, Seoul 04763, KoreaThe Reich Chancellery, built by Albert Speer, was designed with an overwhelming ambience to represent the worldview of Hitler. The interior of the Reich Chancellery comprised high-ceiling and low-ceiling spaces. In this study, the change in a person’s emotions according to the ceiling height while moving was examined through brain wave experiments to understand the stress index for each building space. The Reich Chancellery was recreated through VR, and brain wave data collected per space were processed through a first and second analysis. In the first analysis, beta wave changes related to the stress index were calculated, and the space with the highest fluctuation was analyzed. In the second analysis, the correlation between 10 different types of brain waves and waveforms was analyzed; deep-learning algorithms were used to verify the accuracy and analyze spaces with a high stress index. Subsequently, a deep-learning platform for calculating such a value was developed. The results showed that the change in stress index scores was the highest when entering from the Mosaic Hall (15 m floor height) to the Führerbunker (3 m floor height), which had the largest floor height difference. Accordingly, a stress-ratio prediction model for selecting a space with a high stress level was established by monitoring the architectural space based on brain wave information in a VR space. In the architectural design process, the ratio can be used to reflect user sensibility in the design and improve the efficiency of the design process.https://www.mdpi.com/2071-1050/12/17/6716electroencephalographyvirtual realitymonument architecturestressdata visualizationdeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Seung Yeul Ji
Se Yeon Kang
Han Jong Jun
spellingShingle Seung Yeul Ji
Se Yeon Kang
Han Jong Jun
Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
Sustainability
electroencephalography
virtual reality
monument architecture
stress
data visualization
deep learning
author_facet Seung Yeul Ji
Se Yeon Kang
Han Jong Jun
author_sort Seung Yeul Ji
title Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
title_short Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
title_full Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
title_fullStr Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
title_full_unstemmed Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
title_sort deep-learning-based stress-ratio prediction model using virtual reality with electroencephalography data
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-08-01
description The Reich Chancellery, built by Albert Speer, was designed with an overwhelming ambience to represent the worldview of Hitler. The interior of the Reich Chancellery comprised high-ceiling and low-ceiling spaces. In this study, the change in a person’s emotions according to the ceiling height while moving was examined through brain wave experiments to understand the stress index for each building space. The Reich Chancellery was recreated through VR, and brain wave data collected per space were processed through a first and second analysis. In the first analysis, beta wave changes related to the stress index were calculated, and the space with the highest fluctuation was analyzed. In the second analysis, the correlation between 10 different types of brain waves and waveforms was analyzed; deep-learning algorithms were used to verify the accuracy and analyze spaces with a high stress index. Subsequently, a deep-learning platform for calculating such a value was developed. The results showed that the change in stress index scores was the highest when entering from the Mosaic Hall (15 m floor height) to the Führerbunker (3 m floor height), which had the largest floor height difference. Accordingly, a stress-ratio prediction model for selecting a space with a high stress level was established by monitoring the architectural space based on brain wave information in a VR space. In the architectural design process, the ratio can be used to reflect user sensibility in the design and improve the efficiency of the design process.
topic electroencephalography
virtual reality
monument architecture
stress
data visualization
deep learning
url https://www.mdpi.com/2071-1050/12/17/6716
work_keys_str_mv AT seungyeulji deeplearningbasedstressratiopredictionmodelusingvirtualrealitywithelectroencephalographydata
AT seyeonkang deeplearningbasedstressratiopredictionmodelusingvirtualrealitywithelectroencephalographydata
AT hanjongjun deeplearningbasedstressratiopredictionmodelusingvirtualrealitywithelectroencephalographydata
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