An innovative EEG-based emotion recognition using a single channel-specific feature from the brain rhythm code method

Front Neurosci. 2023 Jul 20:17:1221512. doi: 10.3389/fnins.2023.1221512. eCollection 2023.

Abstract

Introduction: Efficiently recognizing emotions is a critical pursuit in brain-computer interface (BCI), as it has many applications for intelligent healthcare services. In this work, an innovative approach inspired by the genetic code in bioinformatics, which utilizes brain rhythm code features consisting of δ, θ, α, β, or γ, is proposed for electroencephalography (EEG)-based emotion recognition.

Methods: These features are first extracted from the sequencing technique. After evaluating them using four conventional machine learning classifiers, an optimal channel-specific feature that produces the highest accuracy in each emotional case is identified, so emotion recognition through minimal data is realized. By doing so, the complexity of emotion recognition can be significantly reduced, making it more achievable for practical hardware setups.

Results: The best classification accuracies achieved for the DEAP and MAHNOB datasets range from 83-92%, and for the SEED dataset, it is 78%. The experimental results are impressive, considering the minimal data employed. Further investigation of the optimal features shows that their representative channels are primarily on the frontal region, and associated rhythmic characteristics are typical of multiple kinds. Additionally, individual differences are found, as the optimal feature varies with subjects.

Discussion: Compared to previous studies, this work provides insights into designing portable devices, as only one electrode is appropriate to generate satisfactory performances. Consequently, it would advance the understanding of brain rhythms, which offers an innovative solution for classifying EEG signals in diverse BCI applications, including emotion recognition.

Keywords: brain rhythm; electroencephalography (EEG); emotion recognition; feature selection; machine learning.

Grants and funding

This study was supported in part by the National Natural Science Foundation of China under Grant 62072122, the Special Projects in Key Fields of Ordinary Universities of Guangdong Province under Grant 2021ZDZX1087, the Scientific and Technological Planning Projects of Guangdong Province under Grant 2021A0505030074, the Guangzhou Science and Technology Plan Project under Grant 2023A04J0361, the Research Fund of Guangdong Polytechnic Normal University under Grant 2022SDKYA015, the Research Fund of Guangxi Key Lab of Multi-Source Information Mining and Security under Grant MIMS22-02, the Fund of Hubei Province Key Laboratory of Intelligent Information Processing and Real-Time Industrial System (Wuhan University of Science and Technology) under Grant ZNXX2022005, and the Open Foundation of Engineering Research Center of Big Data Application in Private Health Medicine, Fujian Province University under Grant MKF202204.