Skip to content | Accessibility Information

Wilson, W., Granieri, N., Smith, S., Harvey, C., Ali-Maclachlan, I., 2025.

Smartwatch-Based Audio-Gestural Insights in Violin Bow Stroke Analyses

Output Type:Journal article
Publication:Transactions of the International Society for Music Information Retrieval
Publisher:Ubiquity Press, Ltd.
URL:doi.org/10.5334/tismir.216
Volume/Issue:8 (1)
Pagination:pp. 283-299

Following the exposition of quantitative, identifiable idiosyncrasy in violin performance - via neural network classification - we demonstrate that smartwatch-based synchronous audio-gesture logging facilitates interpretable practice feedback in violin performance. The novelty of our approach is twofold: we exploit convenient multimodal data capture using a consumer smartwatch, recording wrist-movement and audio data in parallel. Further, we prioritise the delivery of performance insights at their most interpretable, quantifying tonal and temporal performance trends. Using such accessible hardware to observe meaningful, approachable performance insights, the feasibility of our approach is maximised for use in real-world teaching and learning environments. Presented analyses draw upon a primary dataset compiled from nine violinists executing defined performance exercises. Recordings segmented via note onset detection are subject to subsequent analyses. Trends identified include a cross-participant tendency to 'rush' up-bows versus down-bows, along with lesser temporal and tonal consistency when bowing Spiccato versus Legato.