SPAIHCLGOct 25, 2022

Emotion Recognition With Temporarily Localized 'Emotional Events' in Naturalistic Context

arXiv:2211.02637v13 citationsh-index: 20
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately detecting emotions in EEG data for brain-computer interface applications, though it is incremental as it builds on existing methods with a new dataset design.

The researchers tackled the problem of emotion recognition from EEG signals by introducing a dataset with temporally localized 'Emotional Events' to reduce noise from prolonged stimuli, achieving significantly higher classification accuracy compared to benchmark datasets like DEAP and SEED.

Emotion recognition using EEG signals is an emerging area of research due to its broad applicability in BCI. Emotional feelings are hard to stimulate in the lab. Emotions do not last long, yet they need enough context to be perceived and felt. However, most EEG-related emotion databases either suffer from emotionally irrelevant details (due to prolonged duration stimulus) or have minimal context doubting the feeling of any emotion using the stimulus. We tried to reduce the impact of this trade-off by designing an experiment in which participants are free to report their emotional feelings simultaneously watching the emotional stimulus. We called these reported emotional feelings "Emotional Events" in our Dataset on Emotion with Naturalistic Stimuli (DENS). We used EEG signals to classify emotional events on different combinations of Valence(V) and Arousal(A) dimensions and compared the results with benchmark datasets of DEAP and SEED. STFT is used for feature extraction and used in the classification model consisting of CNN-LSTM hybrid layers. We achieved significantly higher accuracy with our data compared to DEEP and SEED data. We conclude that having precise information about emotional feelings improves the classification accuracy compared to long-duration EEG signals which might be contaminated by mind-wandering.

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