Olfactory Emotion Recognition Using EEG Spectral Topographic Heatmaps and CNNs
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Date
2025-10-26
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Institute of Electrical and Electronics Engineers Inc.
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Abstract
Recognizing emotions evoked by olfactory stimuli using electroencephalogram (EEG) signals is a growing area of interest in affective computing and neuromarketing. This study proposes a lightweight framework that classifies EEG responses to scented and unscented conditions along arousal and pleasure dimensions using single-band spectral topographic heatmaps and a convolutional neural network (CNN). EEG signals were recorded from 57 participants and processed to generate frequency-specific scalp maps for delta (1-4 Hz), theta (4-8 Hz), alpha (8-14 Hz), beta (14-30 Hz), and gamma (> 30 Hz) bands. These heatmaps were used as CNN inputs, achieving up to 98.39% accuracy for arousal (Theta band) and 96.55% for pleasure (Beta and Theta band). The results demonstrate that spectral-domain features alone provide highly discriminative information for olfactory emotion recognition, while reducing computational complexity compared to multi-domain approaches. This approach shows strong potential for real-time neuromarketing, affective computing, and brain-computer interface applications.
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Keywords
Olfactory Emotion Recognition, Deep Learning, Topographic Heatmaps, EEG Signal, Spectral Features
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Source
TIPTEKNO 2025 - Medical Technologies Congress, Proceedings -- 2025 Medical Technologies Congress, TIPTEKNO 2025 -- 26 October 2025 through 28 October 2025 -- Gazi Magusa -- 217812
