On the estimate of music appraisal from surface EEG: a dynamic-network approach based on cross-sensor PAC measurements
Autor: | Nikolaos A. Laskaris, Stylianos Bakas, Dimitrios A. Adamos |
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Rok vydání: | 2021 |
Předmět: |
Dynamic network analysis
Computer science Brain activity and meditation Speech recognition media_common.quotation_subject 0206 medical engineering Biomedical Engineering 02 engineering and technology Recommender system 03 medical and health sciences Cellular and Molecular Neuroscience 0302 clinical medicine Perception Humans Brain–computer interface media_common Brain Mapping Audio signal Brain Experimental data Electroencephalography 020601 biomedical engineering Dynamics (music) Auditory Perception Music 030217 neurology & neurosurgery |
Zdroj: | Journal of Neural Engineering. 18:046073 |
ISSN: | 1741-2552 1741-2560 |
DOI: | 10.1088/1741-2552/abffe6 |
Popis: | Objective. The aesthetic evaluation of music is strongly dependent on the listener and reflects manifold brain processes that go well beyond the perception of incident sound. Being a high-level cognitive reaction, it is difficult to predict merely from the acoustic features of the audio signal and this poses serious challenges to contemporary music recommendation systems. We attempted to decode music appraisal from brain activity, recorded via wearable EEG, during music listening. Approach. To comply with the dynamic nature of music stimuli, cross-frequency coupling measurements were employed in a time-evolving manner to capture the evolving interactions between distinct brain-rhythms during music listening. Brain response to music was first represented as a continuous flow of functional couplings referring to both regional and inter-regional brain dynamics and then modelled as an ensemble of time-varying (sub)networks. Dynamic graph centrality measures were derived, next, as the final feature-engineering step and, lastly, a support-vector machine was trained to decode the subjective music appraisal. A carefully designed experimental paradigm provided the labeled brain signals. Main results. Using data from 20 subjects, dynamic programming to tailor the decoder to each subject individually and cross-validation, we demonstrated highly satisfactory performance (MAE= 0.948, R 2= 0.63) that can be attributed, mostly, to interactions of left frontal gamma rhythm. In addition, our music-appraisal decoder was also employed in a part of the DEAP dataset with similar success. Finally, even a generic version of the decoder (common for all subjects) was found to perform sufficiently. Significance. A novel brain signal decoding scheme was introduced and validated empirically on suitable experimental data. It requires simple operations and leaves room for real-time implementation. Both the code and the experimental data are publicly available. |
Databáze: | OpenAIRE |
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