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.
翻译:使用在线教学视频的学习音乐工具越来越普遍。然而,预先录制的视频缺乏人类导师提供的即时反馈和个人裁缝。此外,现有的视频导航没有优化用于仪器学习,使学习经验被淹没。在与吉他手和先前文献的成型访谈的指导下,我们设计了“独奏者”这一混合学习框架,它自动从现成吉他视频课程中生成可定制的课程。“独奏者”将原始视频作为投入,并利用深造的音频处理来提取音乐信息。这种后端处理用于提供互动可视化,以支持对用户性能的有效视频导航和实时反馈,并创造指导性学习经验。我们展示了独奏者的能力和具体使用案例,即利用教学性YouTube视频学习电吉他独奏。为收集吉他播放者的反馈而进行的远程用户研究显示令人鼓舞的结果,因为用户一致选择与独奏者一起学习,而不是未经翻译的教学视频。