Publication | Closed Access
EEG-based Emotion Recognition Using Spatial-Temporal Representation via Bi-GRU
44
Citations
8
References
2020
Year
Unknown Venue
EngineeringAffective NeuroscienceAttentionSocial SciencesEeg ElectrodesData ScienceDomain ShiftAffective ComputingCognitive ElectrophysiologyCognitive NeuroscienceCognitive ScienceNeuroinformaticsNeuroimagingDeep LearningEeg-based Emotion RecognitionEeg Signal ProcessingDomain AdaptationNeuroscienceEmotionEmotion Recognition
Many prior studies on EEG-based emotion recognition did not consider the spatial-temporal relationships among brain regions and across time. In this paper, we propose a Regionally-Operated Domain Adversarial Network (RODAN), to learn spatial-temporal relationships that correlate between brain regions and time. Moreover, we incorporate the attention mechanism to enable cross-domain learning to capture both spatial-temporal relationships among the EEG electrodes and an adversarial mechanism to reduce the domain shift in EEG signals. To evaluate the performance of RODAN, we conduct subject-dependent, subject-independent, and subject-biased experiments on both DEAP and SEED-IV data sets, which yield encouraging results. In addition, we also discuss the biased sampling issue often observed in EEG-based emotion recognition and present an unbiased benchmark for both DEAP and SEED-IV.
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