| Literature DB >> 35890838 |
Qazi Mazhar Ul Haq1, Leehter Yao1, Wahyu Rahmaniar1, Faizul Islam2.
Abstract
Human emotions are variant with time, non-stationary, complex in nature, and are invoked as a result of human reactions during our daily lives. Continuously detecting human emotions from one-dimensional EEG signals is an arduous task. This paper proposes an advanced signal processing mechanism for emotion detection from EEG signals using continuous wavelet transform. The space and time components of the raw EEG signals are converted into 2D spectrograms followed by feature extraction. A hybrid spatio-temporal deep neural network is implemented to extract rich features. A differential-based entropy feature selection technique adaptively differentiates features based on entropy, based on low and high information regions. Bag of Deep Features (BoDF) is applied to create clusters of similar features and computes the features vocabularies for reduction of feature dimensionality. Extensive experiments are performed on the SEED dataset, which shows the significance of the proposed method compared to state-of-the-art methods. Specifically, the proposed model achieved 96.7%, 96.2%, 95.8%, and 95.3% accuracy with the SJTU SEED dataset, for SVM, ensemble, tree, and KNN classifiers, respectively.Entities:
Keywords: differential entropy; emotion status recognition; hybrid model; spatio-temporal features
Mesh:
Year: 2022 PMID: 35890838 PMCID: PMC9319601 DOI: 10.3390/s22145158
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Overview of the proposed framework.
Comparison of our proposed work with the previous studies.
| Methods | Features | Dataset | No. of Channels | Classifier |
|---|---|---|---|---|
| MIC [ | MFM | DEAP | 18 | CapsNet |
| ER-WTF [ | MFCC | SEED | SVM | |
| Random Forest | ||||
| DEAP | 6 | Random Forest | ||
| EMD [ | MEMD | DEAP | 12 | ANN |
| KNN | ||||
| STRNN [ | STRNN | SEED | 62 | CNN |
| CS [ | RFE | SEED | 18 | SVM |
| DEAP | 12 | SVM | ||
| EC [ | DE | DEAP | 32 | PNN |
| MM [ | BODF | SEED | 62 | SVM |
| KNN | ||||
| DEAP | 32 | SVM | ||
| KNN | ||||
| Our Work | DEFS | SEED | 26 | SVM |
| KNN | ||||
| Tree | ||||
| Ensemble |
Figure 2The proposed framework for classification of Emotions form the EEG signals of the SEED Dataset.
Figure 3Time frequency distribution for three classes of SEED dataset. (a) Neutral. (b) Positive. (c) Negative.
Figure 4The overview of backbone GoogleNet model.
Description of Clips that invoke Positive, Negative, Neutral Emotions.
| No. | Emotion Label | Clips from Movie Source |
|---|---|---|
| 1 | Negative | Tangshan Earthquake |
| 2 | Negative | 1942 |
| 3 | Positive | Lost in Thailand |
| 4 | Positive | Flirting scholar |
| 5 | Positive | Just another Pandora’s Box |
| 6 | Neutral | World Heritage in China |
Figure 5The placement chart of the International 10–20 System and allocation of all 62 channels.
Figure 6Comparison of different deep learning with (a) SVM, (b) KNN, (c)Tree, (d) Ensemble classifier.
Analysis of accuracy following channels reduction of various deep learning models.
| Neural Networks | Channels | Classifiers | Kernals | Accuracy (%) |
|---|---|---|---|---|
| GoogleNet | 26 | SVM | Cubic | 96.7 |
| kNN | Fine | 95.3 | ||
| Tree | Medium | 95.8 | ||
| Ensemble | Subspace KNN | 96.2 | ||
| AlexNet | 28 | SVM | Fine Gaussian | 95.3 |
| kNN | Weighted | 96.2 | ||
| Tree | Medium/Fine | 94.0 | ||
| Ensemble | Subspace KNN | 95.8 | ||
| Resnet-50 | 40 | SVM | Fine Gaussian | 94.4 |
| kNN | Weighted | 96.2 | ||
| Tree | Medium/Fine | 95.3 | ||
| Ensemble | Subspace KNN | 95.3 | ||
| Resnet-101 | 29 | SVM | Fine Gaussian | 94.0 |
| kNN | Weighted | 94.4 | ||
| Tree | Medium/Fine | 94.4 | ||
| Ensemble | Bagged Trees | 94.9 | ||
| InceptionresnetV2 | 32 | SVM | Cubic | 94.4 |
| kNN | Weighted/Fine | 94.4 | ||
| Tree | Medium/Fine | 95.8 | ||
| Ensemble | Subspace KNN | 95.8 |
Comparison of our proposed work with the previous work on emotion detection.
| Methods | Features | Dataset | No. of Channels | Classifier | Accuracy (%) |
|---|---|---|---|---|---|
| MIC [ | MFM | DEAP | 18 | CapsNet | 68.2 |
| ER-WTF [ | MFCC | SEED | 6 | SVM | 83.5 |
| Random Forest | 72.07 | ||||
| DEAP | 6 | Random Forest | 72.07 | ||
| EMD [ | MEMD | DEAP | 12 | ANN | 75 |
| KNN | 67 | ||||
| STRNN [ | STRNN | SEED | 62 | CNN | 89.5 |
| CS [ | RFE | SEED | 18 | SVM | 90.4 |
| DEAP | 12 | SVM | 60.5 | ||
| EC [ | DE | DEAP | 32 | PNN | 79.3 |
| MM [ | BODF | SEED | 62 | SVM | 93.8 |
| KNN | 91.4 | ||||
| DEAP | 32 | SVM | 77.4 | ||
| KNN | 73.6 | ||||
| Our Work | DEFS | SEED | 26 | SVM | 96.7 |
| KNN | 95.3 | ||||
| Tree | 95.8 | ||||
| Ensemble | 96.2 |