Author_Institution :
Dept. of Electr. & Comput. Eng., Aristotle Univ. of Thessaloniki, Thessaloniki, Greece
Abstract :
Affective phenomena, as reflected through brain activity, could constitute an effective index for the detection of music preference. In this vein, this paper focuses on the discrimination between subjects´ electroencephalogram (EEG) responses to self-assessed liked or disliked music, acquired during an experimental procedure, by evaluating different feature extraction approaches and classifiers to this end. Feature extraction is based on time-frequency (TF) analysis by implementing three TF techniques, i.e., spectrogram, Zhao-Atlas-Marks distribution and Hilbert-Huang spectrum (HHS). Feature estimation also accounts for physiological parameters that relate to EEG frequency bands, reference states, time intervals, and hemispheric asymmetries. Classification is performed by employing four classifiers, i.e., support vector machines, k-nearest neighbors (k-NN), quadratic and Mahalanobis distance-based discriminant analyses. According to the experimental results across nine subjects, best classification accuracy {86.52 (±0.76)%} was achieved using k-NN and HHS-based feature vectors ( FVs) representing a bilateral average activity, referred to a resting period, in β (13-30 Hz) and γ (30-49 Hz) bands. Activity in these bands may point to a connection between music preference and emotional arousal phenomena. Furthermore, HHS-based FVs were found to be robust against noise corruption. The outcomes of this study provide early evidence and pave the way for the development of a generalized brain computer interface for music preference recognition.
Keywords :
brain-computer interfaces; electroencephalography; feature extraction; medical signal processing; music; neurophysiology; signal classification; support vector machines; time-frequency analysis; EEG frequency bands; EEG-based recognition; HHS-based feature vectors; Hilbert-Huang spectrum; Mahalanobis distance-based discriminant analysis; TF techniques; Zhao-Atlas-Marks distribution; bilateral average activity; brain activity; electroencephalogram responses; emotional arousal phenomena; feature estimation; feature extraction; frequency 13 Hz to 49 Hz; generalized brain computer interface; hemispheric asymmetries; k-NN-based feature vectors; k-nearest neighbors; music liking; music preference recognition; noise corruption; physiological parameters; quadratic distance-based discriminant analysis; spectrogram; support vector machines; time-frequency analysis; Brain models; Electroencephalography; Feature extraction; Support vector machines; Time frequency analysis; Electroencephalogram (EEG); machine learning; music liking/disliking; time–frequency (TF) analysis; Artificial Intelligence; Brain; Brain Mapping; Electroencephalography; Female; Humans; Male; Music; Pleasure; Signal Processing, Computer-Assisted; Young Adult;