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Development of a Measurement Procedure for Emotional States Detection Based on Single-Channel Ear-EEG: A Proof-of-Concept Study

Academic Article
Publication Date:
2026
abstract:
Real-time emotion monitoring is increasingly relevant in healthcare, automotive, and workplace applications, where adaptive systems can enhance user experience and well-being. This study investigates the feasibility of classifying emotions along the valence–arousal dimensions of the Circumplex Model of Affect using EEG signals acquired from a single mastoid channel positioned near the ear. Twenty-four participants viewed emotion-eliciting videos and self-reported their affective states using the Self-Assessment Manikin. EEG data were recorded with an OpenBCI Cyton board and both spectral and temporal features (including power in multiple frequency bands and entropy-based complexity measures) were extracted from the single ear-channel. A dual analytical framework was adopted: classical statistical analyses (ANOVA, Mann–Whitney U) and artificial neural networks combined with explainable AI methods (Gradient × Input, Integrated Gradients) were used to identify features associated with valence and arousal. Results confirmed the physiological validity of single-channel ear-EEG, and showed that absolute 𝛽- and 𝛾-band power, spectral ratios, and entropy-based metrics consistently contributed to emotion classification. Overall, the findings demonstrate that reliable and interpretable affective information can be extracted from minimal EEG configurations, supporting their potential for wearable, real-world emotion monitoring. Nonetheless, practical considerations—such as long-term comfort, stability, and wearability of ear-EEG devices—remain important challenges and motivate future research on sustained use in naturalistic environments.
Iris type:
1.1 Articolo in rivista
Keywords:
EEG, ear-EEG, wearable EEG, emotion recognition, single-channel, physiological measurement, signal processing
List of contributors:
Arnesano, Marco; Arpaia, Pasquale; Balatti, Simone; Cosoli, Gloria; De Luca, Matteo; Gargiulo, Ludovica; Moccaldi, Nicola; Pollastro, Andrea; Zanto, Theodore; Forenza, Antonio
Authors of the University:
ARNESANO MARCO
COSOLI GLORIA
Handle:
https://iris.uniecampus.it/handle/11389/81715
Published in:
SENSORS
Journal
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URL

https://www.mdpi.com/1424-8220/26/2/385
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