| Literature DB >> 26733912 |
Areej Babiker1, Ibrahima Faye2, Kristin Prehn3, Aamir Malik1.
Abstract
Pupil diameter (PD) has been suggested as a reliable parameter for identifying an individual's emotional state. In this paper, we introduce a learning machine technique to detect and differentiate between positive and negative emotions. We presented 30 participants with positive and negative sound stimuli and recorded pupillary responses. The results showed a significant increase in pupil dilation during the processing of negative and positive sound stimuli with greater increase for negative stimuli. We also found a more sustained dilation for negative compared to positive stimuli at the end of the trial, which was utilized to differentiate between positive and negative emotions using a machine learning approach which gave an accuracy of 96.5% with sensitivity of 97.93% and specificity of 98%. The obtained results were validated using another dataset designed for a different study and which was recorded while 30 participants processed word pairs with positive and negative emotions.Entities:
Keywords: classification; emotion recognition; k-nearest neighbor algorithm; pupillometry; sensitivity analysis
Year: 2015 PMID: 26733912 PMCID: PMC4686885 DOI: 10.3389/fpsyg.2015.01921
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Examples for word material used in second dataset.
| Emotional relations = | Emotional relations ≠ | |
|---|---|---|
| Conceptual relations = | TUMOR – BRAIN/RAT – CELLAR | CANCER – BREAST/SHELL – BEACH |
| Conceptual relations ≠ | COCKROACH – KITCHEN/BODY – DECAY | MURDERER – PARK/BIRD – CHIRP |
Classification accuracy using kNN algorithm.
| Signal | Accuracy | ||
|---|---|---|---|
| First dataset | Condition_0 | Condition_2 | |
| Features of | 96.5% | 97% | 96% |
Confusion matrix of the first dataset.
| 95 | 5 |
| 2 | 98 |
Confusion matrix of condition 1 (Con = Emo=).
| 97 | 3 |
| 3 | 97 |
Confusion matrix of condition 2 (Con≠Emo=).
| 94 | 6 |
| 2 | 98 |
Sensitivity and specificity of the two datasets.
| Dataset | Sensitivity | Specificity |
|---|---|---|
| First dataset | 97.93% | 98% |
| Condition 1 (Con = Emo=) | 97% | 97% |
| condition 2 (Con≠Emo=) | 97.9% | 98% |