Litcius/Paper detail

A Hierarchical Three-Dimensional MLP-Based Model for EEG Emotion Recognition

Wei Li, Ye Tian, Jianzhang Dong, Cheng Fang

2023IEEE Sensors Letters20 citationsDOI

Abstract

Electroencephalogram (EEG) sensor data are useful and important for emotion recognition. However, cross-subject EEG emotion recognition suffers from the challenging problems of individual difference and noise disturbance. To cope with these problems, we propose a hierarchical 3-D MLP-based neural network (HMNN). This method consists of multiple hierarchical layers of 3D-MLPBlocks and a noise optimization module. The 3D-MLPBlock is designed to extract the multiperiod features of common emotional patterns across different individuals; the noise optimization module is devised to enhance the network robustness to noise disturbance. Experimental results on public benchmarks DEAP, DREAMER, and SEED-IV have demonstrated the superiority of HMNN over the related advanced approaches. Specifically, HMNN obtains the accuracies of 63.69%/60.03% for valence/aoursal classification on DEAP, 62.51%/64.49% for valence/arousal classification on DREAMER, and 62.29% for emotion classification on SEED-IV.

Topics & Concepts

Computer scienceElectroencephalographyRobustness (evolution)ArousalValence (chemistry)Artificial intelligencePattern recognition (psychology)Artificial neural networkNoise (video)Speech recognitionEmotion classificationMachine learningPsychologyQuantum mechanicsGenePhysicsBiochemistryNeuroscienceChemistryPsychiatryImage (mathematics)EEG and Brain-Computer InterfacesEmotion and Mood RecognitionGaze Tracking and Assistive Technology