Dalmazzo D, Ramirez R. Air violin: a machine learning approach to fingering gesture recognition. MIE 2017- Proceedings of the 1st ACM SIGCHI International Workshop on Multimodal Interaction for Education
Dalmazzo D, Ramirez R. Air violin: a machine learning approach to fingering gesture recognition. MIE 2017- Proceedings of the 1st ACM SIGCHI International Workshop on Multimodal Interaction for Education
Dalmazzo D, Ramirez R. Air violin: a machine learning approach to fingering gesture recognition. MIE 2017- Proceedings of the 1st ACM SIGCHI International Workshop on Multimodal Interaction for Education
We train and evaluate two machine learning models for predicting fingering in violin performances using motion and EMG sensors integrated in the Myo device. Our aim is twofold: first, provide a fingering recognition model in the context of a gamification virtual violin application where we measure both right hand (i.e. bow) and left hand (i.e. fingering) gestures, and second, implement a tracking system for a computer assisted pedagogical tool for self-regulated learners in high-level music education. Our approach is based on the principle of mapping-by-demonstration in which the model is trained by the performer. We evaluated a model based on Decision Trees and compared it with a Hidden Markovian Model.
Version in Zenodo: http://doi.org/10.5281/zenodo.1193758