Brainwave-based Mood Classification Using Regularized Common Spatial Pattern Filter
In this paper, a method of mood classification based on user brainwaves is proposed for real-time application in commercial services. Unlike conventional mood analyzing systems, the proposed method focuses on classifying real-time user moods by analyzing the user`s brainwaves. Applying brainwave-rel...
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Veröffentlicht in: | KSII transactions on Internet and information systems 2016-02, Vol.10 (2), p.807-824 |
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Sprache: | eng ; kor |
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Zusammenfassung: | In this paper, a method of mood classification based on user brainwaves is proposed for real-time application in commercial services. Unlike conventional mood analyzing systems, the proposed method focuses on classifying real-time user moods by analyzing the user`s brainwaves. Applying brainwave-related research in commercial services requires two elements - robust performance and comfortable fit of.
This paper proposes a filter based on Regularized Common Spatial Patterns (RCSP) and presents its use in the implementation of mood classification for a music service via a wireless consumer electroencephalography (EEG) device that has only 14 pins. Despite the use of fewer pins, the proposed system demonstrates approximately 10% point higher accuracy in mood classification, using the same dataset, compared to one of the best EEG-based mood-classification systems using a skullcap with 32 pins (EU FP7 PetaMedia project). This paper confirms the commercial viability of brainwave-based mood-classification technology.
To analyze the improvements of the system, the changes of feature variations after applying RCSP filters and performance variations between users are also investigated. Furthermore, as a prototype service, this paper introduces a mood-based music list management system called MyMusicShuffler based on the proposed mood-classification method. |
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ISSN: | 1976-7277 1976-7277 |
DOI: | 10.3837/tils.2016.02.020 |