A Consumer BCI for Automated Music Evaluation Within a Popular On-Demand Music Streaming Service - Taking Listener's Brainwaves to Extremes
September 20, 2016 Β· Declared Dead Β· π Artificial Intelligence Applications and Innovations
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Authors
Fotis Kalaganis, Dimitrios A. Adamos, Nikos Laskaris
arXiv ID
1609.06374
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY,
cs.HC,
cs.MM,
cs.NE
Citations
11
Venue
Artificial Intelligence Applications and Innovations
Last Checked
4 months ago
Abstract
We investigated the possibility of using a machine-learning scheme in conjunction with commercial wearable EEG-devices for translating listener's subjective experience of music into scores that can be used for the automated annotation of music in popular on-demand streaming services. Based on the established -neuroscientifically sound- concepts of brainwave frequency bands, activation asymmetry index and cross-frequency-coupling (CFC), we introduce a Brain Computer Interface (BCI) system that automatically assigns a rating score to the listened song. Our research operated in two distinct stages: i) a generic feature engineering stage, in which features from signal-analytics were ranked and selected based on their ability to associate music induced perturbations in brainwaves with listener's appraisal of music. ii) a personalization stage, during which the efficiency of ex- treme learning machines (ELMs) is exploited so as to translate the derived pat- terns into a listener's score. Encouraging experimental results, from a pragmatic use of the system, are presented.
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