3.8 Proceedings Paper

Soloist: Generating Mixed-Initiative Tutorials from Existing Guitar Instructional Videos Through Audio Processing

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3411764.3445162

Keywords

Soloist; Video Learning; Intelligent Tutoring System; Music Learning; Audio Processing; Mixed-Initiative Learning; Waveform Navigation; Converting Videos to Interactive Tutorials

Funding

  1. National Sciences and Engineering Research Council of Canada (NSERC) [IRCPJ 545100-18]

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Learning musical instruments through online instructional videos is popular, but lacks real-time feedback. Soloist is a mixed-initiative learning framework that generates customizable curriculums from existing videos, providing interactive visualization support and real-time feedback.
Learning musical instruments using online instructional videos has become increasingly prevalent. However, pre-recorded videos lack the instantaneous feedback and personal tailoring that human tutors provide. In addition, existing video navigations are not optimized for instrument learning, making the learning experience encumbered. Guided by our formative interviews with guitar players and prior literature, we designed Soloist, a mixed-initiative learning framework that automatically generates customizable curriculums from off-the-shelf guitar video lessons. Soloist takes raw videos as input and leverages deep-learning based audio processing to extract musical information. This back-end processing is used to provide an interactive visualization to support effective video navigation and real-time feedback on the user's performance, creating a guided learning experience. We demonstrate the capabilities and specific use-cases of Soloist within the domain of learning electric guitar solos using instructional YouTube videos. A remote user study, conducted to gather feedback from guitar players, shows encouraging results as the users unanimously preferred learning with Soloist over unconverted instructional videos.

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