Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data
Abstract
:1. Introduction
1.1. Research Background and Purpose
1.2. Research Scope and Method
2. Theoretical Considerations
2.1. Electroencephalogram
2.2. Virtual Reality
2.3. Features of Hitler’s Chancellery
2.4. Research Contributions
3. Experimental Outline and Equipment
3.1. Outline
3.2. Experimental Equipment
3.2.1. Virtual Reality Instruments
3.2.2. EEG Measurement Tool
3.3. Experimental Measurement and Methods
3.3.1. Experimental Measurement
3.3.2. EEG Experimental Method
4. Experimental Results and Analysis
4.1. First Analysis (Beta Waves Only)
4.2. Secondary Analysis (Alpha, Beta, Theta, Gamma and Delta Waves)
5. Conclusions
- The results of similar data demonstrated that the building was indeed designed to induce feelings of grandiosity and trepidation and that the feelings experienced by the president of Czechoslovakia, who had a heart attack in the residence, were obtained.
- The results of the stress index analysis based on the EEG data revealed that when the subject sensed changes in pressure in the high floor space as he moved from a higher floor to a lower floor, he experienced changes in space, which were reflected by an increase in the stress index, indicating that the subject was in a psychologically tense state.
- Comparing EEG data from the subject moving from the Court of Honor with a 25 m tall floor to the Führerbunker with a 3 m tall floor, the total intensity of the beta wave, which is related to stress, was found to be relatively large when the spaces changed. The graph of the experimental results showed that the most significant change in stress was observed when the subject entered the Führerbunker, with a 3 m high floor, from the Mosaic Hall, with a 15 m high floor, owing to these spaces having the largest floor difference.
- Two methods were used to analyze the emotions that the user felt in the VR space based on the EEG signals: a method of expressing unpleasant regions according to time information based on the beta wave that represented stress among the EEG signals and a method of operating deep learning to predict the stress ratio through a correlation analysis of all EEG signals by ranking the regions according to the level of stress. A comparison of the results of the two analysis methods revealed different results from each datum. The first analysis showed that the amount of changes in the beta wave index were high during spatial transitions. In the second analysis (stress ratio analysis), the index was found to be high in the spatial transition at the entrance to and inside the Mosaic Hall. Particularly notably, the corresponding index was high in the space where the subject entered a 15 m high floor through a narrow entrance. Both results were meaningful for analyzing an architectural space. However, in the VR space, we found it necessary to analyze the positive indices through the linking process of the EEG signals or the stagnation of pupils on certain architectural design elements. Therefore, in future research, a VR experiment of a building space must be performed by fusing eye-tracking equipment with VR and EEG equipment. Accordingly, the effective pattern must be calculated by integrating the process for data collection by the sensors of each piece of equipment through integration with deep learning.
Author Contributions
Funding
Conflicts of Interest
References
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Ranking | High Stress Time in First Experiment | Space Location | High Stress Time in Second Experiment | Space Location |
---|---|---|---|---|
1 | 12:37:27 p.m. | Mosaic hall and Führerbunker transition space | 12:37:27 p.m. | Court of honor and Mosaic hall transition space |
2 | 12:36:12 p.m. | Court of honor and Mosaic hall transition space | 12:36:12 p.m. | Court of honor and Mosaic hall transition space |
3 | 12:37:38 p.m. | Führerbunker | 12:37:38 p.m. | Mosaic Hall |
4 | 12:35:44 p.m. | Court of Honor | 12:35:44 p.m. | Mosaic Hall |
5 | 12:37:05 p.m. | Court of honor and Mosaic hall transition space | 12:37:05 p.m. | Führerbunker |
Paired Samples t-test | |||||||
---|---|---|---|---|---|---|---|
Statistic | Df. | p | Mean Difference | SE Difference | |||
First Analysis | Secondary analysis | Student’s t | −23.2 | 154 | <0.001 | −1.26 | 0.0542 |
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Ji, S.Y.; Kang, S.Y.; Jun, H.J. Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data. Sustainability 2020, 12, 6716. https://doi.org/10.3390/su12176716
Ji SY, Kang SY, Jun HJ. Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data. Sustainability. 2020; 12(17):6716. https://doi.org/10.3390/su12176716
Chicago/Turabian StyleJi, Seung Yeul, Se Yeon Kang, and Han Jong Jun. 2020. "Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data" Sustainability 12, no. 17: 6716. https://doi.org/10.3390/su12176716
APA StyleJi, S. Y., Kang, S. Y., & Jun, H. J. (2020). Deep-Learning-Based Stress-Ratio Prediction Model Using Virtual Reality with Electroencephalography Data. Sustainability, 12(17), 6716. https://doi.org/10.3390/su12176716