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Automated accurate emotion classification using Clefia pattern-based features with EEG signals

Abdullah Dogan, Prabal Datta Barua, Mehmet Bayğın, Türker Tuncer, Şengül Doğan, Orhan Yaman, Ali H. Doğru, U. Rajendra Acharya

2022International Journal of Healthcare Management15 citationsDOI

Abstract

Background: The electroencephalogram (EEG) emotion classification/recognition is one of the popular issues for advanced signal classification. However, it is difficult to manually screen the EEG signals as they are highly nonlinear and non-stationary.Methods: This paper introduces a novel nonlinear and multileveled features-based automatic EEG emotion classification method. Our presented EEG classification model uses feature vector creation deploying an S-Box-based local pattern with a decomposition (tunable q-factor wavelet transform is utilized), the most significant features chosen, classification a shallow machine learning method, and hard majority voting. The novel side of this research is the presented feature extractor since a component of the Clefia cipher has been considered to create a local feature extractor.Results: We have obtained an accuracy of 100.0%, 98.02%, 99.33%, and for valence, arousal, and dominance cases using the DEAP database. Also, we achieved 99.69%, 98.98%, and 99.66% accuracies for valence, dominance, and arousal cases with the DREAMER database. Our proposed model is able to classify arousal, dominance, and valence cases with an accuracy of more than 98% using both databases.Conclusions: The results show that the clefia pattern can perform automatic emotion classification with low computational complexity and high accuracy.

Topics & Concepts

Pattern recognition (psychology)Computer scienceElectroencephalographyArtificial intelligenceSupport vector machineFeature extractionValence (chemistry)ArousalPrincipal component analysisFeature (linguistics)Speech recognitionPsychologyPsychiatryNeurosciencePhysicsQuantum mechanicsLinguisticsPhilosophyEEG and Brain-Computer InterfacesEmotion and Mood RecognitionBlind Source Separation Techniques
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