| Literature DB >> 26084816 |
Eun-Hye Jang1, Byoung-Jun Park2, Mi-Sook Park3, Sang-Hyeob Kim4, Jin-Hun Sohn5.
Abstract
BACKGROUND: The aim of the study was to examine the differences of boredom, pain, and surprise. In addition to that, it was conducted to propose approaches for emotion recognition based on physiological signals.Entities:
Mesh:
Year: 2015 PMID: 26084816 PMCID: PMC4490654 DOI: 10.1186/s40101-015-0063-5
Source DB: PubMed Journal: J Physiol Anthropol ISSN: 1880-6791 Impact factor: 2.867
Examples of emotion stimuli
| Emotion | Stimulus |
|---|---|
| Boredom |
|
| Repetitive sounds of numbers from 1 to 10 (3 min) | |
| Pain |
|
| Induction of pain by using a blood pressure cuff (1 min) | |
| Surprise |
|
| Sudden sounds of hog-caller, breaking glass, and thunder during concentration on a game-like computer task (1 min) |
Extracted physiological features
| Signals | Features |
|---|---|
| ECG | b_HR, b_LF, b_HF, b_HRV, e_HR, e_LF, e_HF, e_HRV, d_HR, d_LF, d_HF, d_HRV |
| EDA | b_SCL, b_SCR, e_SCL, e_SCR, d_SCL, d_SCR |
| SKT | b_meanSKT, e_meanSKT, d_meanSKT |
| PPG | b_BVP, b_PTT, e_BVP, e_PTT, d_BVP, d_PTT |
b_ baseline, e_ emotional state, d_ “e_” − “b_”, ECG electrocardiography, EDA electrodermal activity, SKT skin temperature, PPG photoplethysmography, HR heart rate, LF low-frequency, HRV heart rate variability, SCL skin conductance level, SCR skin conductance response, BVP blood volume pulse, PTT pulse transit time
Fig. 1Difference among emotions in HR (***p < .001)
Fig. 2Difference among emotions in SCL (*p < .05, ***p < .001)
Fig. 3Difference among emotions in SCR (***p < .001)
Fig. 4Difference among emotions in meanSKT (*p < .05)
Fig. 5Difference among emotions in BVP (***p < .001)
Fig. 6Difference among emotions in PTT (**p < .01, ***p < .001)
Results of emotion classification by all algorithms
| Models | Accuracy (%) |
|---|---|
| DFA (SPSS 15.0) | 84.7 |
| LDA | 74.9 |
| CART | 67.8 |
| SOM | 61.5 |
| Naïve Bayes | 71.9 |
| SVM | 62.0 |
DFA discriminant function analysis, LDA linear discriminant analysis, CART classification and regression trees, SOM self-organizing map, SVM support vector machine
Result of emotion classification by DFA
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 76.5 | 23.5 | 0.0 |
| Boredom | 7.9 | 89.5 | 2.6 |
| Surprise | 3.7 | 7.4 | 88.9 |
Result of emotion classification by LDA
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 76.3 | 1.8 | 21.9 |
| Boredom | 5.7 | 75.6 | 18.8 |
| Surprise | 20.8 | 6.3 | 72.9 |
Result of emotion classification by CART
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 69.2 | 6.5 | 24.3 |
| Boredom | 6.8 | 76.1 | 17.0 |
| Surprise | 21.9 | 19.3 | 58.9 |
Result of emotion classification by SOM
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 69.3 | 10.2 | 20.5 |
| Boredom | 3.0 | 52.7 | 44.4 |
| Surprise | 7.8 | 30.2 | 62.0 |
Result of emotion classification by Naïve Bayes
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 77.8 | 2.3 | 19.3 |
| Boredom | 8.3 | 71.6 | 19.5 |
| Surprise | 16.1 | 16.7 | 66.7 |
Result of emotion classification by SVM
| (%) | Pain | Boredom | Surprise |
|---|---|---|---|
| Pain | 67.0 | 8.0 | 25.0 |
| Boredom | 5.9 | 62.1 | 32.0 |
| Surprise | 14.1 | 28.6 | 57.3 |